topic
stringlengths
3
96
wiki
stringlengths
33
127
url
stringlengths
101
106
action
stringclasses
7 values
sent
stringlengths
34
223
annotation
stringlengths
74
227
logic
stringlengths
207
5.45k
logic_str
stringlengths
37
493
interpret
stringlengths
43
471
num_func
stringclasses
15 values
nid
stringclasses
13 values
g_ids
stringlengths
70
455
g_ids_features
stringlengths
98
670
g_adj
stringlengths
79
515
table_header
stringlengths
40
458
table_cont
large_stringlengths
135
4.41k
alun jones ( tennis )
https://en.wikipedia.org/wiki/Alun_Jones_%28tennis%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12762499-2.html.csv
unique
the 20 march 2007 tournament was the only one in which alun jones faced vasilis mazarakis in the final .
{'scope': 'all', 'row': '8', 'col': '4', 'col_other': '1', 'criterion': 'equal', 'value': 'vasilis mazarakis', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'opponent in the final', 'vasilis mazarakis'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose opponent in the final record fuzzily matches to vasilis mazarakis .', 'tostr': 'filter_eq { all_rows ; opponent in ...
and { only { filter_eq { all_rows ; opponent in the final ; vasilis mazarakis } } ; eq { hop { filter_eq { all_rows ; opponent in the final ; vasilis mazarakis } ; date } ; 20 march 2007 } } = true
select the rows whose opponent in the final record fuzzily matches to vasilis mazarakis . there is only one such row in the table . the date record of this unqiue row is 20 march 2007 .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'opponent in the final_7': 7, 'vasilis mazarakis_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'date_9': 9, '20 march 2007_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'opponent in the final_7': 'opponent in the final', 'vasilis mazarakis_8': 'vasilis mazarakis', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'date_9': 'date', '20 march 2007_10': '20 march 2007'}
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_str_eq_0': [1, 2], 'all_rows_6': [0], 'opponent in the final_7': [0], 'vasilis mazarakis_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'date_9': [2], '20 march 2007_10': [3]}
['date', 'tournament', 'surface', 'opponent in the final', 'score']
[['19 november 2002', 'berri', 'grass', 'paul baccanello', '6 - 2 , 6 - 2'], ['2 may 2005', 'phuket', 'hard', 'patrick schmolzer', '6 - 1 , 6 - 1'], ['16 may 2005', 'phuket', 'hard', 'phillip king', '6 - 3 , 6 - 1'], ['30 may 2005', 'maspalomas', 'clay', 'ignasi villacampa', '6 - 1 , 6 - 2'], ['12 september 2006', 'hop...
1960 american football league season
https://en.wikipedia.org/wiki/1960_American_Football_League_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11379937-4.html.csv
aggregation
the average amount of touchdowns scored was about 15 touchdowns .
{'scope': 'all', 'col': '6', 'type': 'average', 'result': '15', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', "td 's"], 'result': '15', 'ind': 0, 'tostr': "avg { all_rows ; td 's }"}, '15'], 'result': True, 'ind': 1, 'tostr': "round_eq { avg { all_rows ; td 's } ; 15 } = true", 'tointer': "the average of the td 's record of all rows is 15 ."}
round_eq { avg { all_rows ; td 's } ; 15 } = true
the average of the td 's record of all rows is 15 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, "td 's_4": 4, '15_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', "td 's_4": "td 's", '15_5': '15'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], "td 's_4": [0], '15_5': [1]}
['player', 'comp', 'att', 'comp %', 'yards', "td 's", "int 's"]
[['frank tripucka ( den )', '248', '478', '51.8', '3038', '24', '34'], ['jack kemp ( la )', '211', '406', '52', '3018', '20', '25'], ['al dorow ( nyt )', '201', '396', '50.8', '2748', '26', '26'], ['butch songin ( bos )', '187', '392', '47.7', '2476', '22', '15'], ['cotton davidson ( dal )', '179', '379', '47.2', '2474...
1929 vfl season
https://en.wikipedia.org/wiki/1929_VFL_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10767118-14.html.csv
count
in the 1929 vfl season , among the games where home team scored above 9.0 , 2 of them had attendance over 10000 .
{'scope': 'subset', 'criterion': 'greater_than', 'value': '10000', 'result': '2', 'col': '6', 'subset': {'col': '2', 'criterion': 'greater_than', 'value': '9.0'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_greater', 'args': [{'func': 'filter_greater', 'args': ['all_rows', 'home team score', '9.0'], 'result': None, 'ind': 0, 'tostr': 'filter_greater { all_rows ; home team score ; 9.0 }', 'tointer': 'select the rows whose home team score record is greater ...
eq { count { filter_greater { filter_greater { all_rows ; home team score ; 9.0 } ; crowd ; 10000 } } ; 2 } = true
select the rows whose home team score record is greater than 9.0 . among these rows , select the rows whose crowd record is greater than 10000 . the number of such rows is 2 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_greater_1': 1, 'filter_greater_0': 0, 'all_rows_5': 5, 'home team score_6': 6, '9.0_7': 7, 'crowd_8': 8, '10000_9': 9, '2_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_greater_1': 'filter_greater', 'filter_greater_0': 'filter_greater', 'all_rows_5': 'all_rows', 'home team score_6': 'home team score', '9.0_7': '9.0', 'crowd_8': 'crowd', '10000_9': '10000', '2_10': '2'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_greater_1': [2], 'filter_greater_0': [1], 'all_rows_5': [0], 'home team score_6': [0], '9.0_7': [0], 'crowd_8': [1], '10000_9': [1], '2_10': [3]}
['home team', 'home team score', 'away team', 'away team score', 'venue', 'crowd', 'date']
[['geelong', '9.6 ( 60 )', 'st kilda', '11.5 ( 71 )', 'corio oval', '10500', '3 august 1929'], ['fitzroy', '5.11 ( 41 )', 'melbourne', '11.11 ( 77 )', 'brunswick street oval', '8000', '3 august 1929'], ['north melbourne', '9.8 ( 62 )', 'footscray', '7.7 ( 49 )', 'arden street oval', '7000', '3 august 1929'], ['richmond...
vasek pospisil
https://en.wikipedia.org/wiki/Vasek_Pospisil
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-13181492-2.html.csv
unique
vasek pospisil won only once on clay surface .
{'scope': 'subset', 'row': '5', 'col': '1', 'col_other': 'n/a', 'criterion': 'equal', 'value': 'winner', 'subset': {'col': '4', 'criterion': 'equal', 'value': 'clay'}}
{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'surface', 'clay'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; surface ; clay }', 'tointer': 'select the rows whose surface record fuzzily matches to clay .'}, 'outcome', 'winner'], 'result': None...
only { filter_eq { filter_eq { all_rows ; surface ; clay } ; outcome ; winner } } = true
select the rows whose surface record fuzzily matches to clay . among these rows , select the rows whose outcome record fuzzily matches to winner . there is only one such row in the table .
3
3
{'only_2': 2, 'result_3': 3, 'filter_str_eq_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'surface_5': 5, 'clay_6': 6, 'outcome_7': 7, 'winner_8': 8}
{'only_2': 'only', 'result_3': 'true', 'filter_str_eq_1': 'filter_str_eq', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'surface_5': 'surface', 'clay_6': 'clay', 'outcome_7': 'outcome', 'winner_8': 'winner'}
{'only_2': [3], 'result_3': [], 'filter_str_eq_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'surface_5': [0], 'clay_6': [0], 'outcome_7': [1], 'winner_8': [1]}
['outcome', 'date', 'tournament', 'surface', 'opponent', 'score']
[['runner - up', 'july 13 , 2009', 'usa f17 , peoria', 'clay', 'michael venus', '7 - 6 ( 7 - 4 ) , 4 - 6 , 4 - 6'], ['winner', 'september 26 , 2009', 'italy f29 , alghero', 'hard', 'francesco piccari', '6 - 3 , 6 - 7 ( 5 - 7 ) , 6 - 3'], ['winner', 'october 3 , 2009', "italy f30 , quartu sant ' elena", 'hard', 'matteo ...
mañana es para siempre
https://en.wikipedia.org/wiki/Ma%C3%B1ana_es_para_siempre
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-18498743-1.html.csv
unique
bosnia and herzegovina is the only country that shows their version of mañana es para siempre on monday to saturday .
{'scope': 'all', 'row': '3', 'col': '6', 'col_other': '1', 'criterion': 'equal', 'value': 'monday to saturday', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'monday to friday', 'monday to saturday'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose monday to friday record fuzzily matches to monday to saturday .', 'tostr': 'filter_eq { all_rows ; monday to friday ; m...
and { only { filter_eq { all_rows ; monday to friday ; monday to saturday } } ; eq { hop { filter_eq { all_rows ; monday to friday ; monday to saturday } ; mexico } ; bosnia and herzegovina } } = true
select the rows whose monday to friday record fuzzily matches to monday to saturday . there is only one such row in the table . the mexico record of this unqiue row is bosnia and herzegovina .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'monday to friday_7': 7, 'monday to saturday_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'mexico_9': 9, 'bosnia and herzegovina_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'monday to friday_7': 'monday to friday', 'monday to saturday_8': 'monday to saturday', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'mexico_9': 'mexico', 'bosnia and herzegovina_10': 'bosnia and herzeg...
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_str_eq_0': [1, 2], 'all_rows_6': [0], 'monday to friday_7': [0], 'monday to saturday_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'mexico_9': [2], 'bosnia and herzegovina_10': [3]}
['mexico', 'mañana es para siempre', 'el canal de las estrellas', 'october 20 , 2008', 'june 14 , 2009', 'monday to friday']
[['argentina', 'mañana es para siempre', 'canal 9', 'november 10 , 2011', 'march 16 , 2012', 'monday to friday'], ['bulgaria', 'утре и завинаги', 'diema family', 'january 11 , 2010', 'april 30 , 2010', 'monday to friday'], ['bosnia and herzegovina', 'ljubav je večna', 'pink bh', 'december 3 , 2009', 'may 29 , 2010', 'm...
list of vancouver canucks draft picks
https://en.wikipedia.org/wiki/List_of_Vancouver_Canucks_draft_picks
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11636955-17.html.csv
comparative
of the vancouver canucks draft picks , curtis hunt was selected one round earlier than carl valimont .
{'row_1': '9', 'row_2': '10', 'col': '1', 'col_other': '3', 'relation': 'less', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'less', 'args': [{'func': 'num_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'player', 'curtis hunt'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose player record fuzzily matches to curtis hunt .', 'tostr': 'filter_eq { all_rows ; player ; curtis hunt }'}, 'rd'], 'result': None, '...
less { hop { filter_eq { all_rows ; player ; curtis hunt } ; rd } ; hop { filter_eq { all_rows ; player ; carl valimont } ; rd } } = true
select the rows whose player record fuzzily matches to curtis hunt . take the rd record of this row . select the rows whose player record fuzzily matches to carl valimont . take the rd record of this row . the first record is less than the second record .
5
5
{'less_4': 4, 'result_5': 5, 'num_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'player_7': 7, 'curtis hunt_8': 8, 'rd_9': 9, 'num_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'player_11': 11, 'carl valimont_12': 12, 'rd_13': 13}
{'less_4': 'less', 'result_5': 'true', 'num_hop_2': 'num_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'player_7': 'player', 'curtis hunt_8': 'curtis hunt', 'rd_9': 'rd', 'num_hop_3': 'num_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'player_11': 'player', 'carl valimont_12...
{'less_4': [5], 'result_5': [], 'num_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'player_7': [0], 'curtis hunt_8': [0], 'rd_9': [2], 'num_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'player_11': [1], 'carl valimont_12': [1], 'rd_13': [3]}
['rd', 'pick', 'player', 'team ( league )', 'reg gp', 'pl gp']
[['1', '4', 'jim sandlak', 'london knights ( ohl )', '509', '33'], ['2', '25', 'troy gamble', 'medicine hat tigers ( whl )', '72', '4'], ['3', '46', 'shane doyle', 'belleville bulls ( ohl )', '0', '0'], ['4', '67', 'randy siska', 'medicine hat tigers ( whl )', '0', '0'], ['5', '88', 'robert kron', 'brno zkl ( czech )',...
united states army air forces
https://en.wikipedia.org/wiki/United_States_Army_Air_Forces
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-23508196-5.html.csv
ordinal
of the united states army air forces , the troop carrier group had the 2nd most number of crews .
{'row': '7', 'col': '4', 'order': '2', 'col_other': '1', 'max_or_min': 'max_to_min', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmax', 'args': ['all_rows', 'number of crews', '2'], 'result': None, 'ind': 0, 'tostr': 'nth_argmax { all_rows ; number of crews ; 2 }'}, 'type of unit'], 'result': 'troop carrier group', 'ind': 1, 'tostr': 'hop { nth_argmax { all_rows ; number of...
eq { hop { nth_argmax { all_rows ; number of crews ; 2 } ; type of unit } ; troop carrier group } = true
select the row whose number of crews record of all rows is 2nd maximum . the type of unit record of this row is troop carrier group .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmax_0': 0, 'all_rows_4': 4, 'number of crews_5': 5, '2_6': 6, 'type of unit_7': 7, 'troop carrier group_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmax_0': 'nth_argmax', 'all_rows_4': 'all_rows', 'number of crews_5': 'number of crews', '2_6': '2', 'type of unit_7': 'type of unit', 'troop carrier group_8': 'troop carrier group'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmax_0': [1], 'all_rows_4': [0], 'number of crews_5': [0], '2_6': [0], 'type of unit_7': [1], 'troop carrier group_8': [2]}
['type of unit', 'type of aircraft', 'number of aircraft', 'number of crews', 'men per crew', 'total personnel', 'officers', 'enlisted']
[['very heavy bombardment group', 'b - 29', '45', '60', '11', '2078', '462', '1816'], ['heavy bombardment group', 'b - 17 , b - 24', '72', '96', '9 to 11', '2261', '465', '1796'], ['medium bombardment group', 'b - 25 , b - 26', '96', '96', '5 or 6', '1759', '393', '1386'], ['light bombardment group', 'a - 20 , a - 26',...
2008 issf world cup final ( rifle and pistol )
https://en.wikipedia.org/wiki/2008_ISSF_World_Cup_Final_%28rifle_and_pistol%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18191407-10.html.csv
unique
of the shooters that had 8 rank points , the only one that had a total of 17 was iulian raicea .
{'scope': 'subset', 'row': '6', 'col': '5', 'col_other': '1', 'criterion': 'equal', 'value': '17', 'subset': {'col': '3', 'criterion': 'equal', 'value': '8'}}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_eq', 'args': [{'func': 'filter_eq', 'args': ['all_rows', 'rank points', '8'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; rank points ; 8 }', 'tointer': 'select the rows whose rank points record is equal to 8 .'}, 'total', '17'], 'result...
and { only { filter_eq { filter_eq { all_rows ; rank points ; 8 } ; total ; 17 } } ; eq { hop { filter_eq { filter_eq { all_rows ; rank points ; 8 } ; total ; 17 } ; shooter } ; iulian raicea ( rou ) } } = true
select the rows whose rank points record is equal to 8 . among these rows , select the rows whose total record is equal to 17 . there is only one such row in the table . the shooter record of this unqiue row is iulian raicea ( rou ) .
8
6
{'and_5': 5, 'result_6': 6, 'only_2': 2, 'filter_eq_1': 1, 'filter_eq_0': 0, 'all_rows_7': 7, 'rank points_8': 8, '8_9': 9, 'total_10': 10, '17_11': 11, 'str_eq_4': 4, 'str_hop_3': 3, 'shooter_12': 12, 'iulian raicea ( rou )_13': 13}
{'and_5': 'and', 'result_6': 'true', 'only_2': 'only', 'filter_eq_1': 'filter_eq', 'filter_eq_0': 'filter_eq', 'all_rows_7': 'all_rows', 'rank points_8': 'rank points', '8_9': '8', 'total_10': 'total', '17_11': '17', 'str_eq_4': 'str_eq', 'str_hop_3': 'str_hop', 'shooter_12': 'shooter', 'iulian raicea ( rou )_13': 'iul...
{'and_5': [6], 'result_6': [], 'only_2': [5], 'filter_eq_1': [2, 3], 'filter_eq_0': [1], 'all_rows_7': [0], 'rank points_8': [0], '8_9': [0], 'total_10': [1], '17_11': [1], 'str_eq_4': [5], 'str_hop_3': [4], 'shooter_12': [3], 'iulian raicea ( rou )_13': [4]}
['shooter', 'event', 'rank points', 'score points', 'total']
[['ralf schumann ( ger )', 'wcf 2007', 'defending champion', 'defending champion', 'defending champion'], ['oleksandr petriv ( ukr )', 'og beijing', 'olympic gold medalist', 'olympic gold medalist', 'olympic gold medalist'], ['christian reitz ( ger )', 'og beijing', 'olympic bronze medalist', 'olympic bronze medalist',...
1996 - 97 european challenge cup
https://en.wikipedia.org/wiki/1996%E2%80%9397_European_Challenge_Cup
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-16770037-5.html.csv
ordinal
borgoin scored the second highest points for in the 1996-97 european challenge cup .
{'row': '1', 'col': '5', 'order': '2', 'col_other': '1', 'max_or_min': 'max_to_min', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmax', 'args': ['all_rows', 'points for', '2'], 'result': None, 'ind': 0, 'tostr': 'nth_argmax { all_rows ; points for ; 2 }'}, 'team'], 'result': 'bourgoin', 'ind': 1, 'tostr': 'hop { nth_argmax { all_rows ; points for ; 2 } ; team }'}, 'bourgoin...
eq { hop { nth_argmax { all_rows ; points for ; 2 } ; team } ; bourgoin } = true
select the row whose points for record of all rows is 2nd maximum . the team record of this row is bourgoin .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmax_0': 0, 'all_rows_4': 4, 'points for_5': 5, '2_6': 6, 'team_7': 7, 'bourgoin_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmax_0': 'nth_argmax', 'all_rows_4': 'all_rows', 'points for_5': 'points for', '2_6': '2', 'team_7': 'team', 'bourgoin_8': 'bourgoin'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmax_0': [1], 'all_rows_4': [0], 'points for_5': [0], '2_6': [0], 'team_7': [1], 'bourgoin_8': [2]}
['team', 'tries for', 'tries against', 'try diff', 'points for', 'points against', 'points diff']
[['bourgoin', '27', '4', '+ 23', '196', '66', '+ 130'], ['bordeaux - bègles', '29', '13', '+ 16', '195', '99', '+ 96'], ['swansea', '28', '19', '+ 9', '207', '138', '+ 69'], ['gloucester', '17', '17', '0', '119', '123', '4'], ['ebbw vale', '6', '36', '30', '48', '243', '195'], ['london irish', '12', '30', '18', '90', '...
ningde
https://en.wikipedia.org/wiki/Ningde
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-2013618-1.html.csv
unique
pingnan county is the only administrative region in ningde with less than 100 population density .
{'scope': 'all', 'row': '6', 'col': '8', 'col_other': '1', 'criterion': 'less_than', 'value': '100', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_less', 'args': ['all_rows', 'density', '100'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose density record is less than 100 .', 'tostr': 'filter_less { all_rows ; density ; 100 }'}], 'result': True, 'ind': 1, 'tostr': 'only { filter_less...
and { only { filter_less { all_rows ; density ; 100 } } ; eq { hop { filter_less { all_rows ; density ; 100 } ; english name } ; pingnan county } } = true
select the rows whose density record is less than 100 . there is only one such row in the table . the english name record of this unqiue row is pingnan county .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_less_0': 0, 'all_rows_6': 6, 'density_7': 7, '100_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'english name_9': 9, 'pingnan county_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_less_0': 'filter_less', 'all_rows_6': 'all_rows', 'density_7': 'density', '100_8': '100', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'english name_9': 'english name', 'pingnan county_10': 'pingnan county'}
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_less_0': [1, 2], 'all_rows_6': [0], 'density_7': [0], '100_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'english name_9': [2], 'pingnan county_10': [3]}
['english name', 'simplified', 'traditional', 'pinyin', 'foochow', 'area', 'population', 'density']
[['jiaocheng district', '蕉城区', '蕉城區', 'jiāochéng qū', 'ciĕu - siàng - kṳ̆', '1537', '429260', '279'], ["fu'an city", '福安市', '福安市', "fú ' ān shì", 'hók - ăng - chê', '1795', '563640', '314'], ['fuding city', '福鼎市', '福鼎市', 'fúdǐng shì', 'hók - tīng - chê', '1526', '529534', '347'], ['xiapu county', '霞浦县', '霞蒲縣', 'xiápǔ x...
pavlina nola
https://en.wikipedia.org/wiki/Pavlina_Nola
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12878201-8.html.csv
majority
majority of tournaments won by pavlina nola were played on clay surface .
{'scope': 'subset', 'col': '4', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'clay', 'subset': {'col': '1', 'criterion': 'equal', 'value': 'winners'}}
{'func': 'most_str_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'outcome', 'winners'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; outcome ; winners }', 'tointer': 'select the rows whose outcome record fuzzily matches to winners .'}, 'surface', 'clay'], 'result': True, 'ind': 1, 'tointer'...
most_eq { filter_eq { all_rows ; outcome ; winners } ; surface ; clay } = true
select the rows whose outcome record fuzzily matches to winners . for the surface records of these rows , most of them fuzzily match to clay .
2
2
{'most_str_eq_1': 1, 'result_2': 2, 'filter_str_eq_0': 0, 'all_rows_3': 3, 'outcome_4': 4, 'winners_5': 5, 'surface_6': 6, 'clay_7': 7}
{'most_str_eq_1': 'most_str_eq', 'result_2': 'true', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_3': 'all_rows', 'outcome_4': 'outcome', 'winners_5': 'winners', 'surface_6': 'surface', 'clay_7': 'clay'}
{'most_str_eq_1': [2], 'result_2': [], 'filter_str_eq_0': [1], 'all_rows_3': [0], 'outcome_4': [0], 'winners_5': [0], 'surface_6': [1], 'clay_7': [1]}
['outcome', 'date', 'tournament', 'surface', 'partner', 'opponents in the final', 'score in the final']
[['runner - ups', 'august 7 , 1995', 'horb , germany itf 10000', 'clay', 'anna linkova', 'ivana havrliková monika kratochvílová', '2 - 6 , 5 - 7'], ['winners', 'september 3 , 1995', 'bad nauheim , germany itf 10000', 'clay', 'renata kochta', 'dominika górecka petra plačkova', '7 - 6 , 6 - 2'], ['winners', 'september 17...
members of the 9th seanad
https://en.wikipedia.org/wiki/Members_of_the_9th_Seanad
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15547445-1.html.csv
superlative
the party fine gael had the highest number of members in the administrative panel among parties in the 9th seanad .
{'scope': 'all', 'col_superlative': '2', 'row_superlative': '2', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '1', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'administrative panel'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; administrative panel }'}, 'party'], 'result': 'fine gael', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; administrative panel } ; party }'}, '...
eq { hop { argmax { all_rows ; administrative panel } ; party } ; fine gael } = true
select the row whose administrative panel record of all rows is maximum . the party record of this row is fine gael .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'administrative panel_5': 5, 'party_6': 6, 'fine gael_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'administrative panel_5': 'administrative panel', 'party_6': 'party', 'fine gael_7': 'fine gael'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'administrative panel_5': [0], 'party_6': [1], 'fine gael_7': [2]}
['party', 'administrative panel', 'agricultural panel', 'cultural and educational panel', 'industrial and commercial panel', 'labour panel', 'national university of ireland', 'university of dublin', 'nominated by the taoiseach', 'total']
[['fianna fáil', '2', '4', '2', '3', '5', '0', '0', '9', '25'], ['fine gael', '3', '4', '3', '3', '2', '1', '0', '0', '16'], ['labour party', '1', '1', '0', '1', '2', '0', '0', '0', '5'], ['clann na talmhan', '0', '1', '0', '0', '0', '0', '0', '0', '1'], ['independent', '1', '0', '0', '1', '1', '2', '3', '1', '9'], ['t...
united states house of representatives elections in georgia , 1996
https://en.wikipedia.org/wiki/United_States_House_of_Representatives_elections_in_Georgia%2C_1996
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-27487712-1.html.csv
majority
republicans won most of the seats in the 1996 elections for united states house of representatives in georgia .
{'scope': 'all', 'col': '3', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'republican', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'party', 'republican'], 'result': True, 'ind': 0, 'tointer': 'for the party records of all rows , most of them fuzzily match to republican .', 'tostr': 'most_eq { all_rows ; party ; republican } = true'}
most_eq { all_rows ; party ; republican } = true
for the party records of all rows , most of them fuzzily match to republican .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'party_3': 3, 'republican_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'party_3': 'party', 'republican_4': 'republican'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'party_3': [0], 'republican_4': [0]}
['district', 'incumbent', 'party', 'elected', 'status', 'result']
[["georgia 's 2nd", 'sanford bishop', 'democratic', '1992', 're - elected', 'sanford bishop ( d ) 53.97 % darrel ealum ( r ) 46.03 %'], ["georgia 's 3rd", 'mac collins', 'republican', '1992', 're - elected', 'mac collins ( r ) 61.11 % jim chafin ( d ) 38.89 %'], ["georgia 's 5th", 'john lewis', 'democratic', '1986', 'r...
elena pampoulova
https://en.wikipedia.org/wiki/Elena_Pampoulova
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18330817-11.html.csv
count
elena pampoulova has a career record of 3 - 5 at two different gland slam tournaments .
{'scope': 'all', 'criterion': 'equal', 'value': '3 - 5', 'result': '2', 'col': '15', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'career win - loss', '3 - 5'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose career win - loss record fuzzily matches to 3 - 5 .', 'tostr': 'filter_eq { all_rows ; career win - loss ; 3 - 5 }'}], 'result': '2...
eq { count { filter_eq { all_rows ; career win - loss ; 3 - 5 } } ; 2 } = true
select the rows whose career win - loss record fuzzily matches to 3 - 5 . the number of such rows is 2 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'career win - loss_5': 5, '3 - 5_6': 6, '2_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'career win - loss_5': 'career win - loss', '3 - 5_6': '3 - 5', '2_7': '2'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'career win - loss_5': [0], '3 - 5_6': [0], '2_7': [2]}
['tournament', '1988', '1990', '1991', '1992', '1993', '1995', '1996', '1997', '1998', '1999', '2000', '2001', 'career sr', 'career win - loss']
[['australian open', 'a', '2r', 'a', 'a', 'a', '1r', 'a', '1r', '2r', '2r', 'a', 'a', '0 / 5', '3 - 5'], ['french open', 'a', '2r', '1r', 'a', 'q1', '1r', '1r', '1r', '2r', '2r', 'q3', 'a', '0 / 7', '3 - 7'], ['wimbledon', 'a', 'a', '2r', 'a', 'a', '1r', '1r', 'a', '1r', '3r', 'a', 'a', '0 / 5', '3 - 5'], ['us open', '...
1935 masters tournament
https://en.wikipedia.org/wiki/1935_Masters_Tournament
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12586224-4.html.csv
aggregation
in the 1935 masters tournament , for players who were under par , their average score was 284.2 .
{'scope': 'subset', 'col': '4', 'type': 'average', 'result': '284.2', 'subset': {'col': '5', 'criterion': 'less_than_eq', 'value': '-1'}}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': [{'func': 'filter_less_eq', 'args': ['all_rows', 'to par', '-1'], 'result': None, 'ind': 0, 'tostr': 'filter_less_eq { all_rows ; to par ; -1 }', 'tointer': 'select the rows whose to par record is less than or equal to -1 .'}, 'score'], 'result': '284.2', 'ind': 1, ...
round_eq { avg { filter_less_eq { all_rows ; to par ; -1 } ; score } ; 284.2 } = true
select the rows whose to par record is less than or equal to -1 . the average of the score record of these rows is 284.2 .
3
3
{'eq_2': 2, 'result_3': 3, 'avg_1': 1, 'filter_less_eq_0': 0, 'all_rows_4': 4, 'to par_5': 5, '-1_6': 6, 'score_7': 7, '284.2_8': 8}
{'eq_2': 'eq', 'result_3': 'true', 'avg_1': 'avg', 'filter_less_eq_0': 'filter_less_eq', 'all_rows_4': 'all_rows', 'to par_5': 'to par', '-1_6': '-1', 'score_7': 'score', '284.2_8': '284.2'}
{'eq_2': [3], 'result_3': [], 'avg_1': [2], 'filter_less_eq_0': [1], 'all_rows_4': [0], 'to par_5': [0], '-1_6': [0], 'score_7': [1], '284.2_8': [2]}
['place', 'player', 'country', 'score', 'to par', 'money']
[['t1', 'gene sarazen', 'united states', '68 + 71 + 73 + 70 = 282', '- 6', 'playoff'], ['t1', 'craig wood', 'united states', '69 + 72 + 68 + 73 = 282', '- 6', 'playoff'], ['3', 'olin dutra', 'united states', '70 + 70 + 70 + 74 = 284', '- 4', '600'], ['4', 'henry picard', 'united states', '67 + 68 + 76 + 75 = 286', '- 2...
2004 úrvalsdeild
https://en.wikipedia.org/wiki/2004_%C3%9Arvalsdeild
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11179106-1.html.csv
aggregation
all teams in the 2004 season of úrvalsdeild had an average point score of around 24 .
{'scope': 'all', 'col': '6', 'type': 'average', 'result': '24', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'goals against'], 'result': '24', 'ind': 0, 'tostr': 'avg { all_rows ; goals against }'}, '24'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; goals against } ; 24 } = true', 'tointer': 'the average of the goals against record of all r...
round_eq { avg { all_rows ; goals against } ; 24 } = true
the average of the goals against record of all rows is 24 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'goals against_4': 4, '24_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'goals against_4': 'goals against', '24_5': '24'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'goals against_4': [0], '24_5': [1]}
['team', 'played', 'draw', 'lost', 'goals for', 'goals against', 'goal difference', 'points']
[['fh', '18', '7', '1', '33', '16', '+ 17', '37'], ['íbv', '18', '4', '5', '35', '20', '+ 15', '31'], ['ía', '18', '7', '3', '28', '19', '+ 9', '31'], ['fylkir', '18', '5', '5', '26', '20', '+ 6', '29'], ['keflavík', '18', '3', '8', '31', '33', '- 2', '24'], ['kr', '18', '7', '6', '21', '22', '- 1', '22'], ['grindavík'...
california 's great america
https://en.wikipedia.org/wiki/California%27s_Great_America
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1680162-1.html.csv
comparative
the flight deck achieved a higher rating than the woodstock express .
{'row_1': '2', 'row_2': '8', 'col': '5', 'col_other': '1', 'relation': 'greater', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'greater', 'args': [{'func': 'num_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'ride', 'flight deck'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose ride record fuzzily matches to flight deck .', 'tostr': 'filter_eq { all_rows ; ride ; flight deck }'}, 'rating'], 'result': None, ...
greater { hop { filter_eq { all_rows ; ride ; flight deck } ; rating } ; hop { filter_eq { all_rows ; ride ; woodstock express } ; rating } } = true
select the rows whose ride record fuzzily matches to flight deck . take the rating record of this row . select the rows whose ride record fuzzily matches to woodstock express . take the rating record of this row . the first record is greater than the second record .
5
5
{'greater_4': 4, 'result_5': 5, 'num_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'ride_7': 7, 'flight deck_8': 8, 'rating_9': 9, 'num_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'ride_11': 11, 'woodstock express_12': 12, 'rating_13': 13}
{'greater_4': 'greater', 'result_5': 'true', 'num_hop_2': 'num_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'ride_7': 'ride', 'flight deck_8': 'flight deck', 'rating_9': 'rating', 'num_hop_3': 'num_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'ride_11': 'ride', 'woodstock ...
{'greater_4': [5], 'result_5': [], 'num_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'ride_7': [0], 'flight deck_8': [0], 'rating_9': [2], 'num_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'ride_11': [1], 'woodstock express_12': [1], 'rating_13': [3]}
['ride', 'year opened', 'ride manufacturer and type', 'minimum height', 'rating']
[['the demon', '1980', 'arrow dynamics', '48', '5'], ['flight deck', '1993', 'bolliger & mabillard inverted roller coaster', '54', '5'], ['gold striker', '2013', 'great coasters international wooden roller coaster', '48', '4'], ['grizzly', '1986', 'wooden roller coaster', '48', '4'], ['psycho mouse', '2001', 'arrow dyn...
1980 tampa bay buccaneers season
https://en.wikipedia.org/wiki/1980_Tampa_Bay_Buccaneers_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11406866-2.html.csv
count
in the 1980 tampa bay buccaneers season , among the games played in november , 1980 , 5 of them were played in tampa stadium .
{'scope': 'subset', 'criterion': 'equal', 'value': 'tampa stadium', 'result': '3', 'col': '6', 'subset': {'col': '2', 'criterion': 'fuzzily_match', 'value': 'november'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'date', 'november'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; date ; november }', 'tointer': 'select the rows whose date record fuzzily matches to november .'}, 'game si...
eq { count { filter_eq { filter_eq { all_rows ; date ; november } ; game site ; tampa stadium } } ; 3 } = true
select the rows whose date record fuzzily matches to november . among these rows , select the rows whose game site record fuzzily matches to tampa stadium . the number of such rows is 3 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_str_eq_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'date_6': 6, 'november_7': 7, 'game site_8': 8, 'tampa stadium_9': 9, '3_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_str_eq_1': 'filter_str_eq', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'date_6': 'date', 'november_7': 'november', 'game site_8': 'game site', 'tampa stadium_9': 'tampa stadium', '3_10': '3'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_str_eq_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'date_6': [0], 'november_7': [0], 'game site_8': [1], 'tampa stadium_9': [1], '3_10': [3]}
['week', 'date', 'opponent', 'result', 'kickoff', 'game site', 'attendance', 'record']
[['week', 'date', 'opponent', 'result', 'kickoff', 'game site', 'attendance', 'record'], ['1', 'september 7 , 1980', 'cincinnati bengals', 'w 17 - 12', '1:00', 'riverfront stadium', '35551', '1 - 0'], ['2', 'september 11 , 1980', 'los angeles rams', 'w 10 - 9', '9:00', 'tampa stadium', '66576', '2 - 0'], ['3', 'septemb...
1987 - 88 bradford city a.f.c. season
https://en.wikipedia.org/wiki/1987%E2%80%9388_Bradford_City_A.F.C._season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18998832-5.html.csv
superlative
in the 1987 - 88 bradford city a.f.c. season , their game with luton town was the away game that drew the highest attendance .
{'scope': 'subset', 'col_superlative': '6', 'row_superlative': '6', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '3,4', 'subset': {'col': '4', 'criterion': 'equal', 'value': 'away'}}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'venue', 'away'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; venue ; away }', 'tointer': 'select the rows whose venue record fuzzily matches to away .'}, 'attendance'], 're...
eq { hop { argmax { filter_eq { all_rows ; venue ; away } ; attendance } ; opponent } ; luton town } = true
select the rows whose venue record fuzzily matches to away . select the row whose attendance record of these rows is maximum . the opponent record of this row is luton town .
4
4
{'str_eq_3': 3, 'result_4': 4, 'str_hop_2': 2, 'argmax_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'venue_6': 6, 'away_7': 7, 'attendance_8': 8, 'opponent_9': 9, 'luton town_10': 10}
{'str_eq_3': 'str_eq', 'result_4': 'true', 'str_hop_2': 'str_hop', 'argmax_1': 'argmax', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'venue_6': 'venue', 'away_7': 'away', 'attendance_8': 'attendance', 'opponent_9': 'opponent', 'luton town_10': 'luton town'}
{'str_eq_3': [4], 'result_4': [], 'str_hop_2': [3], 'argmax_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'venue_6': [0], 'away_7': [0], 'attendance_8': [1], 'opponent_9': [2], 'luton town_10': [3]}
['round ( leg )', 'date', 'opponent', 'venue', 'result', 'attendance']
[['2 ( 1 )', '22 september 1987', 'fulham', 'away', '5 - 1', '4357'], ['2 ( 2 )', '7 october 1987', 'fulham', 'home', '2 - 1', '6408'], ['3', '27 october 1987', 'charlton athletic', 'away', '1 - 0', '3629'], ['4', '18 november 1987', 'reading', 'away', '0 - 0', '6784'], ['4r', '24 november 1987', 'reading', 'home', '1 ...
list of virginia covered bridges
https://en.wikipedia.org/wiki/List_of_Virginia_covered_bridges
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-14218015-1.html.csv
aggregation
the average length of the covered bridges in virginia is 86.25 feet .
{'scope': 'all', 'col': '5', 'type': 'average', 'result': '86.25', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'length ( ft )'], 'result': '86.25', 'ind': 0, 'tostr': 'avg { all_rows ; length ( ft ) }'}, '86.25'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; length ( ft ) } ; 86.25 } = true', 'tointer': 'the average of the length ( ft ) record...
round_eq { avg { all_rows ; length ( ft ) } ; 86.25 } = true
the average of the length ( ft ) record of all rows is 86.25 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'length (ft)_4': 4, '86.25_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'length (ft)_4': 'length ( ft )', '86.25_5': '86.25'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'length (ft)_4': [0], '86.25_5': [1]}
['name', 'county', 'location', 'built', 'length ( ft )', 'spans']
[['biedler farm', 'rockingham', 'broadway', '1896', '93', 'smith creek'], ['bob white', 'patrick', 'woolwine', '1921', '80', 'smith river'], ['ck reynolds', 'giles', 'newport', '1919', '36', 'sinking creek'], ['humpback', 'alleghany', 'covington', '1857', '109', 'dunlap creek'], ["jack 's creek", 'patrick', 'woolwine',...
list of townships in north dakota
https://en.wikipedia.org/wiki/List_of_townships_in_North_Dakota
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18600760-24.html.csv
ordinal
ypsilanti is the township in north dakota that had the second highest population in 2010 .
{'row': '5', 'col': '3', 'order': '2', 'col_other': '1', 'max_or_min': 'max_to_min', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmax', 'args': ['all_rows', 'pop ( 2010 )', '2'], 'result': None, 'ind': 0, 'tostr': 'nth_argmax { all_rows ; pop ( 2010 ) ; 2 }'}, 'township'], 'result': 'ypsilanti', 'ind': 1, 'tostr': 'hop { nth_argmax { all_rows ; pop ( 2010 ) ; 2 } ; township...
eq { hop { nth_argmax { all_rows ; pop ( 2010 ) ; 2 } ; township } ; ypsilanti } = true
select the row whose pop ( 2010 ) record of all rows is 2nd maximum . the township record of this row is ypsilanti .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmax_0': 0, 'all_rows_4': 4, 'pop (2010)_5': 5, '2_6': 6, 'township_7': 7, 'ypsilanti_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmax_0': 'nth_argmax', 'all_rows_4': 'all_rows', 'pop (2010)_5': 'pop ( 2010 )', '2_6': '2', 'township_7': 'township', 'ypsilanti_8': 'ypsilanti'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmax_0': [1], 'all_rows_4': [0], 'pop (2010)_5': [0], '2_6': [0], 'township_7': [1], 'ypsilanti_8': [2]}
['township', 'county', 'pop ( 2010 )', 'land ( sqmi )', 'water ( sqmi )', 'latitude', 'longitude', 'geo id', 'ansi code']
[['yellowstone', 'mckenzie', '417', '40.198', '2.136', '47.895843', '- 103.997037', '3805387820', '01759523'], ['york', 'benson', '27', '36.028', '0.273', '48.324845', '- 99.533482', '3800587900', '02397901'], ['yorktown', 'dickey', '50', '35.804', '0.000', '46.153339', '- 98.316833', '3802187940', '01036768'], ['young...
great rivers athletic conference
https://en.wikipedia.org/wiki/Great_Rivers_Athletic_Conference
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-22319599-1.html.csv
majority
most of the schools in the great rivers athletic conference include black among their school colors .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'fuzzily_match', 'value': 'black', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'colors', 'black'], 'result': True, 'ind': 0, 'tointer': 'for the colors records of all rows , most of them fuzzily match to black .', 'tostr': 'most_eq { all_rows ; colors ; black } = true'}
most_eq { all_rows ; colors ; black } = true
for the colors records of all rows , most of them fuzzily match to black .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'colors_3': 3, 'black_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'colors_3': 'colors', 'black_4': 'black'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'colors_3': [0], 'black_4': [0]}
['school', 'location', 'team name', 'colors', 'varsity teams', 'njcaa championships']
[['john a logan college', 'carterville , il 62918', 'vols', 'black & white', '7', '0'], ['kaskaskia college', 'centralia , il 62801', 'blue devils & blue angels', 'navy & white', '12', '0'], ['lake land college', 'mattoon , il 61938', 'lakers', 'red & black', '6', '0'], ['lincoln trail college', 'robinson , il 62454', ...
atp bordeaux
https://en.wikipedia.org/wiki/ATP_Bordeaux
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-16028631-1.html.csv
ordinal
the 2nd to last year for the atp bordeaux was when wayne ferreira was the champion .
{'row': '16', 'col': '1', 'order': '2', 'col_other': '3', 'max_or_min': 'max_to_min', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmax', 'args': ['all_rows', 'year', '2'], 'result': None, 'ind': 0, 'tostr': 'nth_argmax { all_rows ; year ; 2 }'}, 'champions'], 'result': 'wayne ferreira', 'ind': 1, 'tostr': 'hop { nth_argmax { all_rows ; year ; 2 } ; champions }'}, 'wayne ferr...
eq { hop { nth_argmax { all_rows ; year ; 2 } ; champions } ; wayne ferreira } = true
select the row whose year record of all rows is 2nd maximum . the champions record of this row is wayne ferreira .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmax_0': 0, 'all_rows_4': 4, 'year_5': 5, '2_6': 6, 'champions_7': 7, 'wayne ferreira_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmax_0': 'nth_argmax', 'all_rows_4': 'all_rows', 'year_5': 'year', '2_6': '2', 'champions_7': 'champions', 'wayne ferreira_8': 'wayne ferreira'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmax_0': [1], 'all_rows_4': [0], 'year_5': [0], '2_6': [0], 'champions_7': [1], 'wayne ferreira_8': [2]}
['year', 'tournament name', 'champions', 'runners - up', 'score']
[['1979', 'grand prix passing shot', 'yannick noah', 'harold solomon', '6 - 0 , 6 - 7 , 6 - 1 , 1 - 6 , 6 - 4'], ['1980', 'grand prix de passing shot', 'mario martinez', 'gianni ocleppo', '6 - 0 , 7 - 5 , 7 - 5'], ['1981', 'grand prix passing shot', 'andrés gómez', 'thierry tulasne', '7 - 6 , 7 - 6 , 6 - 1'], ['1982', ...
cultural interest fraternities and sororities
https://en.wikipedia.org/wiki/Cultural_interest_fraternities_and_sororities
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-2538117-12.html.csv
ordinal
delta episilon sigma iota has the second earliest founding date of any of these organiations .
{'row': '8', 'col': '4', 'order': '2', 'col_other': '2', 'max_or_min': 'min_to_max', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmin', 'args': ['all_rows', 'founding date', '2'], 'result': None, 'ind': 0, 'tostr': 'nth_argmin { all_rows ; founding date ; 2 }'}, 'organization'], 'result': 'delta epsilon sigma iota', 'ind': 1, 'tostr': 'hop { nth_argmin { all_rows ; founding...
eq { hop { nth_argmin { all_rows ; founding date ; 2 } ; organization } ; delta epsilon sigma iota } = true
select the row whose founding date record of all rows is 2nd minimum . the organization record of this row is delta epsilon sigma iota .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmin_0': 0, 'all_rows_4': 4, 'founding date_5': 5, '2_6': 6, 'organization_7': 7, 'delta epsilon sigma iota_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmin_0': 'nth_argmin', 'all_rows_4': 'all_rows', 'founding date_5': 'founding date', '2_6': '2', 'organization_7': 'organization', 'delta epsilon sigma iota_8': 'delta epsilon sigma iota'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmin_0': [1], 'all_rows_4': [0], 'founding date_5': [0], '2_6': [0], 'organization_7': [1], 'delta epsilon sigma iota_8': [2]}
['letters', 'organization', 'nickname', 'founding date', 'founding university', 'type']
[['αιο', 'alpha iota omicron', 'aio', '1998 - 10 - 16', 'university of michigan', 'fraternity'], ['βχθ', 'beta chi theta 2', 'beta chi / bct', '1999 - 06 - 02', 'university of california , los angeles', 'fraternity'], ['βκγ', 'beta kappa gamma', 'bkg', '1999 - 05 - 06', 'university of texas at austin', 'fraternity'], [...
washington redskins draft history
https://en.wikipedia.org/wiki/Washington_Redskins_draft_history
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17100961-57.html.csv
aggregation
the average pick for the washington redskins draft history is 15 .
{'scope': 'all', 'col': '2', 'type': 'average', 'result': '15', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'pick'], 'result': '15', 'ind': 0, 'tostr': 'avg { all_rows ; pick }'}, '15'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; pick } ; 15 } = true', 'tointer': 'the average of the pick record of all rows is 15 .'}
round_eq { avg { all_rows ; pick } ; 15 } = true
the average of the pick record of all rows is 15 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'pick_4': 4, '15_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'pick_4': 'pick', '15_5': '15'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'pick_4': [0], '15_5': [1]}
['round', 'pick', 'overall', 'name', 'position', 'college']
[['2', '3', '30', 'markus koch', 'de', 'boise state'], ['2', '18', '45', 'walter murray', 'wr', 'hawaii'], ['3', '20', '75', 'alvin walton', 'db', 'kansas'], ['5', '3', '113', 'ravin caldwell', 'lb', 'arkansas'], ['6', '8', '146', 'mark rypien', 'qb', 'washington state'], ['6', '18', '156', 'jim huddleston', 'g', 'virg...
comparison of top chess players throughout history
https://en.wikipedia.org/wiki/Comparison_of_top_chess_players_throughout_history
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1710426-1.html.csv
aggregation
the top chess players in history have an average 1-year elo peak rating of 2869 .
{'scope': 'all', 'col': '2', 'type': 'average', 'result': '2869', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', '1 - year peak'], 'result': '2869', 'ind': 0, 'tostr': 'avg { all_rows ; 1 - year peak }'}, '2869'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; 1 - year peak } ; 2869 } = true', 'tointer': 'the average of the 1 - year peak record of...
round_eq { avg { all_rows ; 1 - year peak } ; 2869 } = true
the average of the 1 - year peak record of all rows is 2869 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, '1 - year peak_4': 4, '2869_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', '1 - year peak_4': '1 - year peak', '2869_5': '2869'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], '1 - year peak_4': [0], '2869_5': [1]}
['rank', '1 - year peak', '5 - year peak', '10 - year peak', '15 - year peak', '20 - year peak']
[['1', 'bobby fischer , 2881', 'garry kasparov , 2875', 'garry kasparov , 2863', 'garry kasparov , 2862', 'garry kasparov , 2856'], ['2', 'garry kasparov , 2879', 'emanuel lasker , 2854', 'emanuel lasker , 2847', 'anatoly karpov , 2820', 'anatoly karpov , 2818'], ['3', 'mikhail botvinnik , 2871', 'josé capablanca , 284...
sammy mcilroy
https://en.wikipedia.org/wiki/Sammy_McIlroy
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1699550-1.html.csv
count
sammy mcilroy had 2 world cup qualifications in his career .
{'scope': 'all', 'criterion': 'equal', 'value': 'world cup qualification', 'result': '2', 'col': '6', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'competition', 'world cup qualification'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose competition record fuzzily matches to world cup qualification .', 'tostr': 'filter_eq { all_rows ; competition ; world ...
eq { count { filter_eq { all_rows ; competition ; world cup qualification } } ; 2 } = true
select the rows whose competition record fuzzily matches to world cup qualification . the number of such rows is 2 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'competition_5': 5, 'world cup qualification_6': 6, '2_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'competition_5': 'competition', 'world cup qualification_6': 'world cup qualification', '2_7': '2'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'competition_5': [0], 'world cup qualification_6': [0], '2_7': [2]}
['goal', 'date', 'venue', 'score', 'result', 'competition']
[['1', '29 october 1975', 'belfast , northern ireland', '2 - 0', '3 - 0', 'euro 1976 qualification'], ['2', '21 september 1977', 'belfast , northern ireland', '2 - 0', '2 - 0', '1978 world cup qualification'], ['3', '15 october 1980', 'belfast , northern ireland', '2 - 0', '3 - 0', '1982 world cup qualification'], ['4'...
2007 - 08 washington capitals season
https://en.wikipedia.org/wiki/2007%E2%80%9308_Washington_Capitals_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11772462-6.html.csv
majority
all games of the washington capitals ' in the 2007 - 08 season were scheduled for the month of january .
{'scope': 'all', 'col': '1', 'most_or_all': 'all', 'criterion': 'equal', 'value': 'january', 'subset': None}
{'func': 'all_str_eq', 'args': ['all_rows', 'date', 'january'], 'result': True, 'ind': 0, 'tointer': 'for the date records of all rows , all of them fuzzily match to january .', 'tostr': 'all_eq { all_rows ; date ; january } = true'}
all_eq { all_rows ; date ; january } = true
for the date records of all rows , all of them fuzzily match to january .
1
1
{'all_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'date_3': 3, 'january_4': 4}
{'all_str_eq_0': 'all_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'date_3': 'date', 'january_4': 'january'}
{'all_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'date_3': [0], 'january_4': [0]}
['date', 'visitor', 'score', 'home', 'decision', 'attendance', 'record']
[['january 1', 'ottawa', '3 - 6', 'washington', 'kolzig', '14547', '16 - 19 - 5'], ['january 3', 'washington', '0 - 2', 'boston', 'kolzig', '12240', '16 - 20 - 5'], ['january 5', 'washington', '5 - 4', 'montreal', 'kolzig', '21273', '17 - 20 - 5'], ['january 9', 'colorado', '1 - 2', 'washington', 'kolzig', '16168', '18...
houston dynamo records and statistics
https://en.wikipedia.org/wiki/Houston_Dynamo_records_and_statistics
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17984330-1.html.csv
aggregation
the houston dynamo players averaged around 3.3 goals in the concacaf .
{'scope': 'all', 'col': '5', 'type': 'average', 'result': '3.3', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'concacaf'], 'result': '3.3', 'ind': 0, 'tostr': 'avg { all_rows ; concacaf }'}, '3.3'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; concacaf } ; 3.3 } = true', 'tointer': 'the average of the concacaf record of all rows is 3.3 .'}
round_eq { avg { all_rows ; concacaf } ; 3.3 } = true
the average of the concacaf record of all rows is 3.3 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'concacaf_4': 4, '3.3_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'concacaf_4': 'concacaf', '3.3_5': '3.3'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'concacaf_4': [0], '3.3_5': [1]}
['name', 'years', 'mls cup', 'us open cup', 'concacaf', 'other', 'total']
[['wade barrett', '2006 - present', '8', '2', '5', '9', '86'], ['pat onstad', '2006 - present', '9', '2', '4', '8', '82'], ['brian mullan', '2006 - present', '8', '2', '4', '7', '80'], ['dwayne de rosario', '2006 - present', '8', '2', '5', '9', '78'], ['eddie robinson', '2006 - present', '8', '3', '4', '7', '72'], ['cr...
german armed forces casualties in afghanistan
https://en.wikipedia.org/wiki/German_Armed_Forces_casualties_in_Afghanistan
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12378453-8.html.csv
superlative
the incident on 2009 - 09 - 16 resulted in the most soldiers wounded in action for the german armed forces in afghanistan .
{'scope': 'all', 'col_superlative': '5', 'row_superlative': '13', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '1', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'casualties'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; casualties }'}, 'date'], 'result': '2009 - 09 - 16', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; casualties } ; date }'}, '2009 - 09 - 16'], 'result':...
eq { hop { argmax { all_rows ; casualties } ; date } ; 2009 - 09 - 16 } = true
select the row whose casualties record of all rows is maximum . the date record of this row is 2009 - 09 - 16 .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'casualties_5': 5, 'date_6': 6, '2009 - 09 - 16_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'casualties_5': 'casualties', 'date_6': 'date', '2009 - 09 - 16_7': '2009 - 09 - 16'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'casualties_5': [0], 'date_6': [1], '2009 - 09 - 16_7': [2]}
['date', 'location', 'nature of incident', 'circumstances', 'casualties']
[['2009 - 02 - 11', 'mazar - i - sharif', 'unknown', 'unknown', '1 killed'], ['2009 - 03 - 14', 'fayzabad', 'non - hostile', 'traffic accident', '1 dead , 2 injured'], ['2009 - 04 - 29', 'kunduz area', 'hostile', 'suicide bomber attack', '5 wia'], ['2009 - 04 - 29', 'kunduz area', 'hostile', 'direct fire', '1 kia , 10 ...
1975 - 76 boston celtics season
https://en.wikipedia.org/wiki/1975%E2%80%9376_Boston_Celtics_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17342278-4.html.csv
majority
all games of the 1975 - 76 boston celtics season were scheduled for november .
{'scope': 'all', 'col': '2', 'most_or_all': 'all', 'criterion': 'equal', 'value': 'november', 'subset': None}
{'func': 'all_str_eq', 'args': ['all_rows', 'date', 'november'], 'result': True, 'ind': 0, 'tointer': 'for the date records of all rows , all of them fuzzily match to november .', 'tostr': 'all_eq { all_rows ; date ; november } = true'}
all_eq { all_rows ; date ; november } = true
for the date records of all rows , all of them fuzzily match to november .
1
1
{'all_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'date_3': 3, 'november_4': 4}
{'all_str_eq_0': 'all_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'date_3': 'date', 'november_4': 'november'}
{'all_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'date_3': [0], 'november_4': [0]}
['game', 'date', 'team', 'score', 'location attendance', 'record']
[['4', 'november 1', 'chicago', 'l 82 - 84', 'chicago stadium', '3 - 1'], ['5', 'november 5', 'buffalo', 'w 105 - 95', 'boston garden', '4 - 1'], ['6', 'november 7', 'milwaukee', 'l 101 - 104', 'mecca arena', '4 - 2'], ['7', 'november 8', 'detroit', 'w 118 - 104', 'cobo arena', '5 - 2'], ['8', 'november 11', 'atlanta',...
2001 wta tier i series
https://en.wikipedia.org/wiki/2001_WTA_Tier_I_Series
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-16851172-1.html.csv
superlative
the last game in may of the 2001 wta tier i series was played on a clay surface .
{'scope': 'subset', 'col_superlative': '3', 'row_superlative': '6', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '2', 'subset': {'col': '3', 'criterion': 'fuzzily_match', 'value': 'may'}}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'week', 'may'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; week ; may }', 'tointer': 'select the rows whose week record fuzzily matches to may .'}, 'week'], 'result': None,...
eq { hop { argmax { filter_eq { all_rows ; week ; may } ; week } ; surface } ; clay } = true
select the rows whose week record fuzzily matches to may . select the row whose week record of these rows is maximum . the surface record of this row is clay .
4
4
{'str_eq_3': 3, 'result_4': 4, 'str_hop_2': 2, 'argmax_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'week_6': 6, 'may_7': 7, 'week_8': 8, 'surface_9': 9, 'clay_10': 10}
{'str_eq_3': 'str_eq', 'result_4': 'true', 'str_hop_2': 'str_hop', 'argmax_1': 'argmax', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'week_6': 'week', 'may_7': 'may', 'week_8': 'week', 'surface_9': 'surface', 'clay_10': 'clay'}
{'str_eq_3': [4], 'result_4': [], 'str_hop_2': [3], 'argmax_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'week_6': [0], 'may_7': [0], 'week_8': [1], 'surface_9': [2], 'clay_10': [3]}
['tournament', 'surface', 'week', 'winners', 'finalists', 'semifinalists']
[['tokyo', 'carpet ( i )', 'january 29', 'lindsay davenport 6 - 7 ( 4 ) , 6 - 4 , 6 - 2', 'martina hingis', 'magdalena maleeva anna kournikova'], ['indian wells', 'hard', 'march 5', 'serena williams 4 - 6 , 6 - 4 , 6 - 2', 'kim clijsters', 'martina hingis venus williams'], ['miami', 'hard', 'march 19', 'venus williams ...
wake forest demon deacons football , 1980 - 89
https://en.wikipedia.org/wiki/Wake_Forest_Demon_Deacons_football%2C_1980%E2%80%9389
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15531181-15.html.csv
superlative
the game played at memorial stadium clemson was the highest attended game .
{'scope': 'all', 'col_superlative': '5', 'row_superlative': '8', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '3', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'attendance'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; attendance }'}, 'location'], 'result': 'memorial stadium clemson , sc', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; attendance } ; location }'}, 'memo...
eq { hop { argmax { all_rows ; attendance } ; location } ; memorial stadium clemson , sc } = true
select the row whose attendance record of all rows is maximum . the location record of this row is memorial stadium clemson , sc .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'attendance_5': 5, 'location_6': 6, 'memorial stadium clemson , sc_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'attendance_5': 'attendance', 'location_6': 'location', 'memorial stadium clemson , sc_7': 'memorial stadium clemson , sc'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'attendance_5': [0], 'location_6': [1], 'memorial stadium clemson , sc_7': [2]}
['date', 'opponent', 'location', 'result', 'attendance']
[['09 / 12 / 1987', 'richmond', 'groves stadium winston - salem , nc', 'w 24 - 0', '14250'], ['09 / 19 / 1987', 'north carolina state', 'groves stadium winston - salem , nc', 'w 21 - 3', '23600'], ['09 / 26 / 1987', 'appalachian state', 'groves stadium winston - salem , nc', 'w 16 - 12', '33400'], ['10 / 01 / 1987', 'a...
pemra \ xc3 \ xb6zgen
https://en.wikipedia.org/wiki/Pemra_%C3%96zgen
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17373032-2.html.csv
count
in the list of final matches given pemra özgen won seven .
{'scope': 'all', 'criterion': 'equal', 'value': 'winner', 'result': '7', 'col': '1', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'outcome', 'winner'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose outcome record fuzzily matches to winner .', 'tostr': 'filter_eq { all_rows ; outcome ; winner }'}], 'result': '7', 'ind': 1, 'tostr': 'coun...
eq { count { filter_eq { all_rows ; outcome ; winner } } ; 7 } = true
select the rows whose outcome record fuzzily matches to winner . the number of such rows is 7 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'outcome_5': 5, 'winner_6': 6, '7_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'outcome_5': 'outcome', 'winner_6': 'winner', '7_7': '7'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'outcome_5': [0], 'winner_6': [0], '7_7': [2]}
['outcome', 'date', 'tournament', 'surface', 'opponent in the final', 'score']
[['winner', '11 july 2005', 'istanbul , turkey', 'hard', 'radana holušová', '6 - 4 6 - 3'], ['runner - up', '21 nov 2005', 'ashkelon , israel', 'hard', 'sharon fichman', '1 - 6 1 - 6'], ['runner - up', '26 may 2008', 'gaziantep , turkey', 'hard', 'cagla buyukakcay', '5 - 7 4 - 6'], ['winner', '02 june 2008', 'izmir , t...
2003 - 04 toronto raptors season
https://en.wikipedia.org/wiki/2003%E2%80%9304_Toronto_Raptors_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-15869204-7.html.csv
count
during this period of the 2003-04 toronto raptors season , the toronto raptors won four games .
{'scope': 'all', 'criterion': 'fuzzily_match', 'value': 'w', 'result': '4', 'col': '4', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'score', 'w'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose score record fuzzily matches to w .', 'tostr': 'filter_eq { all_rows ; score ; w }'}], 'result': '4', 'ind': 1, 'tostr': 'count { filter_eq { all_r...
eq { count { filter_eq { all_rows ; score ; w } } ; 4 } = true
select the rows whose score record fuzzily matches to w . the number of such rows is 4 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'score_5': 5, 'w_6': 6, '4_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'score_5': 'score', 'w_6': 'w', '4_7': '4'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'score_5': [0], 'w_6': [0], '4_7': [2]}
['game', 'date', 'team', 'score', 'high points', 'high rebounds', 'high assists', 'location attendance', 'record']
[['45', 'february 1', 'la lakers', 'l 83 - 84 ( ot )', 'vince carter ( 27 )', 'chris bosh ( 14 )', 'morris peterson ( 4 )', 'air canada centre 20116', '21 - 24'], ['46', 'february 3', 'philadelphia', 'w 93 - 80 ( ot )', 'vince carter ( 33 )', 'donyell marshall ( 14 )', 'jalen rose ( 5 )', 'wachovia center 19049', '22 -...
list of vancouver canucks draft picks
https://en.wikipedia.org/wiki/List_of_Vancouver_Canucks_draft_picks
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11636955-20.html.csv
majority
most of the players had a reg gp of 0 .
{'scope': 'all', 'col': '5', 'most_or_all': 'most', 'criterion': 'equal', 'value': '0', 'subset': None}
{'func': 'most_eq', 'args': ['all_rows', 'reg gp', '0'], 'result': True, 'ind': 0, 'tointer': 'for the reg gp records of all rows , most of them are equal to 0 .', 'tostr': 'most_eq { all_rows ; reg gp ; 0 } = true'}
most_eq { all_rows ; reg gp ; 0 } = true
for the reg gp records of all rows , most of them are equal to 0 .
1
1
{'most_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'reg gp_3': 3, '0_4': 4}
{'most_eq_0': 'most_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'reg gp_3': 'reg gp', '0_4': '0'}
{'most_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'reg gp_3': [0], '0_4': [0]}
['rd', 'pick', 'player', 'team ( league )', 'reg gp', 'pl gp']
[['1', '2', 'trevor linden', 'medicine hat tigers ( whl )', '1140', '118'], ['2', '33', 'leif rohlin', 'vik v채ster책s hk ( swe )', '95', '5'], ['3', '44', 'dane jackson', 'vernon lakers ( bcjhl )', '15', '6'], ['6', '107', "corrie d'alessio", 'cornell university ( ncaa )', '0', '0'], ['6', '122', 'phil von stefenelli', ...
bo ' ness and kinneil railway
https://en.wikipedia.org/wiki/Bo%27ness_and_Kinneil_Railway
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1174877-18.html.csv
unique
only one of the original tanker wagons from the bo ' ness and kinneil railway are currently operational .
{'scope': 'all', 'row': '5', 'col': '3', 'col_other': 'n/a', 'criterion': 'equal', 'value': 'operational', 'subset': None}
{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'current status', 'operational'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose current status record fuzzily matches to operational .', 'tostr': 'filter_eq { all_rows ; current status ; operational }'}], 'result': True, 'ind': 1, 't...
only { filter_eq { all_rows ; current status ; operational } } = true
select the rows whose current status record fuzzily matches to operational . there is only one such row in the table .
2
2
{'only_1': 1, 'result_2': 2, 'filter_str_eq_0': 0, 'all_rows_3': 3, 'current status_4': 4, 'operational_5': 5}
{'only_1': 'only', 'result_2': 'true', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_3': 'all_rows', 'current status_4': 'current status', 'operational_5': 'operational'}
{'only_1': [2], 'result_2': [], 'filter_str_eq_0': [1], 'all_rows_3': [0], 'current status_4': [0], 'operational_5': [0]}
['number & name', 'description', 'current status', 'livery', 'date']
[['scottish tar distillers no 78', 'rectangular tanker', 'static display in the museum', 'black', '1877'], ['oakbank oil company no 13', '10t tanker', 'static display in the museum', 'black', '1894'], ['no a43', 'shell bp tanker', 'static display in the museum', 'black', '1897'], ['naval store no 161', '14t tanker', 's...
administrative divisions of lithuania
https://en.wikipedia.org/wiki/Administrative_divisions_of_Lithuania
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-1784514-1.html.csv
comparative
samogitian eldership was established two years before trakai voivodeship .
{'row_1': '6', 'row_2': '7', 'col': '3', 'col_other': '1', 'relation': 'diff', 'record_mentioned': 'no', 'diff_result': {'diff_value': '2 years', 'bigger': 'row2'}}
{'func': 'eq', 'args': [{'func': 'diff', 'args': [{'func': 'num_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'voivodeship after 1569', 'samogitian eldership'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose voivodeship after 1569 record fuzzily matches to samogitian eldership .', 'tostr': ...
eq { diff { hop { filter_eq { all_rows ; voivodeship after 1569 ; samogitian eldership } ; year established } ; hop { filter_eq { all_rows ; voivodeship after 1569 ; trakai voivodeship } ; year established } } ; -2 years } = true
select the rows whose voivodeship after 1569 record fuzzily matches to samogitian eldership . take the year established record of this row . select the rows whose voivodeship after 1569 record fuzzily matches to trakai voivodeship . take the year established record of this row . the second record is 2 years larger than...
6
6
{'str_eq_5': 5, 'result_6': 6, 'diff_4': 4, 'num_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_7': 7, 'voivodeship after 1569_8': 8, 'samogitian eldership_9': 9, 'year established_10': 10, 'num_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_11': 11, 'voivodeship after 1569_12': 12, 'trakai voivodeship_13': 13, 'year establish...
{'str_eq_5': 'str_eq', 'result_6': 'true', 'diff_4': 'diff', 'num_hop_2': 'num_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_7': 'all_rows', 'voivodeship after 1569_8': 'voivodeship after 1569', 'samogitian eldership_9': 'samogitian eldership', 'year established_10': 'year established', 'num_hop_3': 'num_hop', 'f...
{'str_eq_5': [6], 'result_6': [], 'diff_4': [5], 'num_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_7': [0], 'voivodeship after 1569_8': [0], 'samogitian eldership_9': [0], 'year established_10': [2], 'num_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_11': [1], 'voivodeship after 1569_12': [1], 'trakai voivodeship_13...
['voivodeship after 1569', 'capital', 'year established', 'number of powiats', 'area ( km square ) in 1590 ( lithuanian ) category : articles with lithuanian - language external links']
[['brest litovsk voivodeship', 'brest', '1566', '2 powiats', '40600'], ['minsk voivodeship', 'minsk', '1566', '3 powiats', '55500'], ['mstsislaw voivodeship', 'mstsislaw', '1566', '1 powiat', '22600'], ['nowogródek voivodeship', 'navahrudak', '1507', '3 powiats', '33200'], ['polotsk voivodeship', 'polotsk', '1504', '1 ...
2008 - 09 phoenix suns season
https://en.wikipedia.org/wiki/2008%E2%80%9309_Phoenix_Suns_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17340355-8.html.csv
majority
during this period of the 2008-09 phoenix suns season , steve nash led the phoenix suns in assist in most of the games played .
{'scope': 'all', 'col': '6', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'steve nash', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'high assists', 'steve nash'], 'result': True, 'ind': 0, 'tointer': 'for the high assists records of all rows , most of them fuzzily match to steve nash .', 'tostr': 'most_eq { all_rows ; high assists ; steve nash } = true'}
most_eq { all_rows ; high assists ; steve nash } = true
for the high assists records of all rows , most of them fuzzily match to steve nash .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'high assists_3': 3, 'steve nash_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'high assists_3': 'high assists', 'steve nash_4': 'steve nash'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'high assists_3': [0], 'steve nash_4': [0]}
['game', 'date', 'team', 'score', 'high points', 'high assists', 'location attendance', 'record']
[['46', 'february 2', 'sacramento', 'w 129 - 81 ( ot )', "amar ' e stoudemire ( 25 )", 'steve nash ( 9 )', 'us airways center 18422', '26 - 20'], ['47', 'february 4', 'golden state', 'l 112 - 124 ( ot )', 'jason richardson ( 24 )', 'steve nash ( 9 )', 'oracle arena 19596', '26 - 21'], ['48', 'february 6', 'golden state...
2006 latvian first league
https://en.wikipedia.org/wiki/2006_Latvian_First_League
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18017936-2.html.csv
comparative
the fk valmiera had a better position on the latvian first league of 2006 season compared to the fk auda kekava team .
{'row_1': '7', 'row_2': '14', 'col': '1', 'col_other': '2', 'relation': 'less', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'less', 'args': [{'func': 'num_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'club', 'fk valmiera'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose club record fuzzily matches to fk valmiera .', 'tostr': 'filter_eq { all_rows ; club ; fk valmiera }'}, 'position'], 'result': None, '...
less { hop { filter_eq { all_rows ; club ; fk valmiera } ; position } ; hop { filter_eq { all_rows ; club ; fk auda kekava } ; position } } = true
select the rows whose club record fuzzily matches to fk valmiera . take the position record of this row . select the rows whose club record fuzzily matches to fk auda kekava . take the position record of this row . the first record is less than the second record .
5
5
{'less_4': 4, 'result_5': 5, 'num_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'club_7': 7, 'fk valmiera_8': 8, 'position_9': 9, 'num_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'club_11': 11, 'fk auda kekava_12': 12, 'position_13': 13}
{'less_4': 'less', 'result_5': 'true', 'num_hop_2': 'num_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'club_7': 'club', 'fk valmiera_8': 'fk valmiera', 'position_9': 'position', 'num_hop_3': 'num_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'club_11': 'club', 'fk auda keka...
{'less_4': [5], 'result_5': [], 'num_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'club_7': [0], 'fk valmiera_8': [0], 'position_9': [2], 'num_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'club_11': [1], 'fk auda kekava_12': [1], 'position_13': [3]}
['position', 'club', 'played', 'wins', 'draws', 'losses', 'goals for', 'goals against', 'points', 'goal difference']
[['1', 'jfk olimps r카ga', '30', '26', '2', '2', '111', '15', '80', '+ 96'], ['2', 'fc ditton - 2 daugavpils', '30', '21', '7', '2', '88', '24', '70', '+ 64'], ['3', 'skonto - 2 riga', '30', '20', '5', '5', '78', '23', '65', '+ 55'], ['4', 'ventspils - 2', '30', '20', '4', '6', '108', '25', '64', '+ 83'], ['5', 'r카ga - ...
1981 vfl season
https://en.wikipedia.org/wiki/1981_VFL_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10823950-3.html.csv
majority
all of the games were played on 11 april 1981 .
{'scope': 'all', 'col': '7', 'most_or_all': 'all', 'criterion': 'equal', 'value': '11 april 1981', 'subset': None}
{'func': 'all_str_eq', 'args': ['all_rows', 'date', '11 april 1981'], 'result': True, 'ind': 0, 'tointer': 'for the date records of all rows , all of them fuzzily match to 11 april 1981 .', 'tostr': 'all_eq { all_rows ; date ; 11 april 1981 } = true'}
all_eq { all_rows ; date ; 11 april 1981 } = true
for the date records of all rows , all of them fuzzily match to 11 april 1981 .
1
1
{'all_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'date_3': 3, '11 april 1981_4': 4}
{'all_str_eq_0': 'all_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'date_3': 'date', '11 april 1981_4': '11 april 1981'}
{'all_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'date_3': [0], '11 april 1981_4': [0]}
['home team', 'home team score', 'away team', 'away team score', 'venue', 'crowd', 'date']
[['footscray', '18.11 ( 119 )', 'melbourne', '18.12 ( 120 )', 'western oval', '13256', '11 april 1981'], ['carlton', '14.24 ( 108 )', 'fitzroy', '12.20 ( 92 )', 'princes park', '24780', '11 april 1981'], ['north melbourne', '15.26 ( 116 )', 'geelong', '14.5 ( 89 )', 'arden street oval', '17744', '11 april 1981'], ['ric...
1982 u.s. open ( golf )
https://en.wikipedia.org/wiki/1982_U.S._Open_%28golf%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12819742-2.html.csv
count
during the 1982 u.s. open , two players from the united states had a total score greater than 153 .
{'scope': 'subset', 'criterion': 'greater_than', 'value': '153', 'result': '2', 'col': '4', 'subset': {'col': '2', 'criterion': 'equal', 'value': 'united states'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_greater', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'country', 'united states'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; country ; united states }', 'tointer': 'select the rows whose country record fuzzily matches to un...
eq { count { filter_greater { filter_eq { all_rows ; country ; united states } ; total ; 153 } } ; 2 } = true
select the rows whose country record fuzzily matches to united states . among these rows , select the rows whose total record is greater than 153 . the number of such rows is 2 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_greater_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'country_6': 6, 'united states_7': 7, 'total_8': 8, '153_9': 9, '2_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_greater_1': 'filter_greater', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'country_6': 'country', 'united states_7': 'united states', 'total_8': 'total', '153_9': '153', '2_10': '2'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_greater_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'country_6': [0], 'united states_7': [0], 'total_8': [1], '153_9': [1], '2_10': [3]}
['player', 'country', 'year ( s ) won', 'total', 'to par']
[['hubert green', 'united states', '1977', '152', '+ 8'], ['jerry pate', 'united states', '1976', '153', '+ 9'], ['lee trevino', 'united states', '1968 , 1971', '154', '+ 10'], ['arnold palmer', 'united states', '1960', '156', '+ 12'], ['gary player', 'south africa', '1965', '156', '+ 12']]
phoenix suns all - time roster
https://en.wikipedia.org/wiki/Phoenix_Suns_all-time_roster
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11482079-12.html.csv
count
a total of seventeen players are listed in the phoenix suns all-time roster .
{'scope': 'all', 'criterion': 'all', 'value': 'n/a', 'result': '17', 'col': '1', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_all', 'args': ['all_rows', 'player'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose player record is arbitrary .', 'tostr': 'filter_all { all_rows ; player }'}], 'result': '17', 'ind': 1, 'tostr': 'count { filter_all { all_rows ; player }...
eq { count { filter_all { all_rows ; player } } ; 17 } = true
select the rows whose player record is arbitrary . the number of such rows is 17 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_all_0': 0, 'all_rows_4': 4, 'player_5': 5, '17_6': 6}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_all_0': 'filter_all', 'all_rows_4': 'all_rows', 'player_5': 'player', '17_6': '17'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_all_0': [1], 'all_rows_4': [0], 'player_5': [0], '17_6': [2]}
['player', 'pos', 'from', 'school / country', 'rebs', 'asts']
[['maciej lampe', 'pf', '2004', 'poland', '76', '10'], ['andrew lang', 'c', '1988', 'arkansas', '1267', '100'], ['antonio lang', 'sf', '1994', 'duke', '4', '1'], ['dan langhi', 'pf', '2002', 'vanderbilt', '87', '21'], ['dave lattin', 'f / c', '1968', 'utep', '323', '48'], ['gani lawal', 'pf', '2010', 'georgia tech', '0...
united states house of representatives elections , 1968
https://en.wikipedia.org/wiki/United_States_House_of_Representatives_elections%2C_1968
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-1341738-19.html.csv
majority
all of the louisiana incumbents in the 1968 united states house of representatives elections were with the democratic party .
{'scope': 'all', 'col': '3', 'most_or_all': 'all', 'criterion': 'equal', 'value': 'democratic', 'subset': None}
{'func': 'all_str_eq', 'args': ['all_rows', 'party', 'democratic'], 'result': True, 'ind': 0, 'tointer': 'for the party records of all rows , all of them fuzzily match to democratic .', 'tostr': 'all_eq { all_rows ; party ; democratic } = true'}
all_eq { all_rows ; party ; democratic } = true
for the party records of all rows , all of them fuzzily match to democratic .
1
1
{'all_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'party_3': 3, 'democratic_4': 4}
{'all_str_eq_0': 'all_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'party_3': 'party', 'democratic_4': 'democratic'}
{'all_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'party_3': [0], 'democratic_4': [0]}
['district', 'incumbent', 'party', 'first elected', 'result', 'candidates']
[['louisiana 1', 'f edward hebert', 'democratic', '1940', 're - elected', 'f edward hebert ( d ) unopposed'], ['louisiana 2', 'hale boggs', 'democratic', '1946', 're - elected', 'hale boggs ( d ) 51.2 % david c treen ( r ) 48.8 %'], ['louisiana 3', 'edwin e willis', 'democratic', '1948', 'lost renomination democratic h...
best wnba player espy award
https://en.wikipedia.org/wiki/Best_WNBA_Player_ESPY_Award
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10525601-1.html.csv
majority
for the best wnba player espy award , most of the winners were from the united states .
{'scope': 'all', 'col': '3', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'united states', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'nationality', 'united states'], 'result': True, 'ind': 0, 'tointer': 'for the nationality records of all rows , most of them fuzzily match to united states .', 'tostr': 'most_eq { all_rows ; nationality ; united states } = true'}
most_eq { all_rows ; nationality ; united states } = true
for the nationality records of all rows , most of them fuzzily match to united states .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'nationality_3': 3, 'united states_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'nationality_3': 'nationality', 'united states_4': 'united states'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'nationality_3': [0], 'united states_4': [0]}
['year', 'player', 'nationality', 'position played', 'team represented']
[['1998', 'cynthia cooper', 'united states', 'point guard', 'houston comets'], ['1999', 'cynthia cooper ( 2 )', 'united states', 'point guard', 'houston comets'], ['2000', 'cynthia cooper ( 3 )', 'united states', 'point guard', 'houston comets'], ['2001', 'sheryl swoopes', 'united states', 'small forward', 'houston com...
cho kwang - rae
https://en.wikipedia.org/wiki/Cho_Kwang-Rae
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12513368-1.html.csv
aggregation
choe kwang-rae scored a total of four goals in the 1979 president 's cup .
{'scope': 'subset', 'col': '3', 'type': 'sum', 'result': '4', 'subset': {'col': '5', 'criterion': 'equal', 'value': "1979 president 's cup"}}
{'func': 'round_eq', 'args': [{'func': 'sum', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'competition', "1979 president 's cup"], 'result': None, 'ind': 0, 'tostr': "filter_eq { all_rows ; competition ; 1979 president 's cup }", 'tointer': "select the rows whose competition record fuzzily matches to 1979 p...
round_eq { sum { filter_eq { all_rows ; competition ; 1979 president 's cup } ; score } ; 4 } = true
select the rows whose competition record fuzzily matches to 1979 president 's cup . the sum of the score record of these rows is 4 .
3
3
{'eq_2': 2, 'result_3': 3, 'sum_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'competition_5': 5, "1979 president's cup_6": 6, 'score_7': 7, '4_8': 8}
{'eq_2': 'eq', 'result_3': 'true', 'sum_1': 'sum', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'competition_5': 'competition', "1979 president's cup_6": "1979 president 's cup", 'score_7': 'score', '4_8': '4'}
{'eq_2': [3], 'result_3': [], 'sum_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'competition_5': [0], "1979 president's cup_6": [0], 'score_7': [1], '4_8': [2]}
['date', 'venue', 'score', 'result', 'competition']
[['july 22 , 1977', 'kuala lumpur', '1 goal', '5 - 1', '1977 merdeka cup'], ['july 26 , 1977', 'kuala lumpur', '1 goal', '4 - 0', '1977 merdeka cup'], ['july 12 , 1978', 'kuala lumpur', '1 goal', '4 - 0', '1978 merdeka cup'], ['december 10 , 1978', 'bangkok', '2 goals', '5 - 1', '1978 asian games'], ['september 8 , 197...
list of england national rugby union team results 1970 - 79
https://en.wikipedia.org/wiki/List_of_England_national_rugby_union_team_results_1970%E2%80%9379
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18178924-3.html.csv
aggregation
for the england national rugby union team results in 1970 - 79 , when the venue was london , the average against was 14 .
{'scope': 'subset', 'col': '2', 'type': 'average', 'result': '14', 'subset': {'col': '4', 'criterion': 'fuzzily_match', 'value': 'twickenham , london'}}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'venue', 'twickenham , london'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; venue ; twickenham , london }', 'tointer': 'select the rows whose venue record fuzzily matches to twickenham , london .'}, 'ag...
round_eq { avg { filter_eq { all_rows ; venue ; twickenham , london } ; against } ; 14 } = true
select the rows whose venue record fuzzily matches to twickenham , london . the average of the against record of these rows is 14 .
3
3
{'eq_2': 2, 'result_3': 3, 'avg_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'venue_5': 5, 'twickenham, london_6': 6, 'against_7': 7, '14_8': 8}
{'eq_2': 'eq', 'result_3': 'true', 'avg_1': 'avg', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'venue_5': 'venue', 'twickenham, london_6': 'twickenham , london', 'against_7': 'against', '14_8': '14'}
{'eq_2': [3], 'result_3': [], 'avg_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'venue_5': [0], 'twickenham, london_6': [0], 'against_7': [1], '14_8': [2]}
['opposing teams', 'against', 'date', 'venue', 'status']
[['wales', '12', '15 / 01 / 1972', 'twickenham , london', 'five nations'], ['ireland', '16', '12 / 02 / 1972', 'twickenham , london', 'five nations'], ['france', '37', '26 / 02 / 1972', 'stade colombes , paris', 'five nations'], ['scotland', '23', '18 / 03 / 1972', 'murrayfield , edinburgh', 'five nations'], ['south af...
swimming at the 2008 summer olympics - men 's 100 metre backstroke
https://en.wikipedia.org/wiki/Swimming_at_the_2008_Summer_Olympics_%E2%80%93_Men%27s_100_metre_backstroke
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18624696-4.html.csv
majority
a majority of those swimming at the 2008 summer olympics cleared 54 seconds .
{'scope': 'all', 'col': '5', 'most_or_all': 'most', 'criterion': 'less_than', 'value': '54.0', 'subset': None}
{'func': 'most_less', 'args': ['all_rows', 'time', '54.0'], 'result': True, 'ind': 0, 'tointer': 'for the time records of all rows , most of them are less than 54.0 .', 'tostr': 'most_less { all_rows ; time ; 54.0 } = true'}
most_less { all_rows ; time ; 54.0 } = true
for the time records of all rows , most of them are less than 54.0 .
1
1
{'most_less_0': 0, 'result_1': 1, 'all_rows_2': 2, 'time_3': 3, '54.0_4': 4}
{'most_less_0': 'most_less', 'result_1': 'true', 'all_rows_2': 'all_rows', 'time_3': 'time', '54.0_4': '54.0'}
{'most_less_0': [1], 'result_1': [], 'all_rows_2': [0], 'time_3': [0], '54.0_4': [0]}
['rank', 'lane', 'name', 'nationality', 'time']
[['1', '4', 'arkady vyatchanin', 'russia', '53.06'], ['2', '5', 'aschwin wildeboer faber', 'spain', '53.51'], ['3', '3', 'liam tancock', 'great britain', '53.61'], ['4', '2', 'junichi miyashita', 'japan', '53.69'], ['5', '7', 'tomomi morita', 'japan', '53.95'], ['6', '8', 'gregor tait', 'great britain', '54.37'], ['7',...
missouri tigers men 's basketball
https://en.wikipedia.org/wiki/Missouri_Tigers_men%27s_basketball
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-16201038-4.html.csv
majority
in their overall record , the missouri tigers hold a winning record against most of their opponents .
{'scope': 'all', 'col': '8', 'most_or_all': 'most', 'criterion': 'fuzzily_match', 'value': 'w', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'current streak', 'w'], 'result': True, 'ind': 0, 'tointer': 'for the current streak records of all rows , most of them fuzzily match to w .', 'tostr': 'most_eq { all_rows ; current streak ; w } = true'}
most_eq { all_rows ; current streak ; w } = true
for the current streak records of all rows , most of them fuzzily match to w .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'current streak_3': 3, 'w_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'current streak_3': 'current streak', 'w_4': 'w'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'current streak_3': [0], 'w_4': [0]}
['missouri vs', 'overall record', 'columbia', "opponent 's venue", 'neutral site', 'last 5 meetings', 'last 10 meetings', 'current streak']
[['colorado', 'mu , 99 - 53', 'mu , 57 - 11', 'cu , 34 - 30', 'mu , 12 - 8', 'mu , 4 - 1', 'mu , 9 - 1', 'w 1'], ['creighton', 'mu , 9 - 7', 'mu , 3 - 2', 'tied , 4 - 4', 'mu , 2 - 1', 'mu , 3 - 2', 'cu , 6 - 4', 'l 1'], ['drake', 'mu , 27 - 7', 'mu , 17 - 3', 'mu , 10 - 4', 'tied , 0 - 0', 'mu , 4 - 1', 'mu , 8 - 2', ...
2009 masters tournament
https://en.wikipedia.org/wiki/2009_Masters_Tournament
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18812411-7.html.csv
count
at the 2009 masters tournament , 10 of the players were from the united states .
{'scope': 'all', 'criterion': 'equal', 'value': 'united states', 'result': '10', 'col': '3', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'country', 'united states'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose country record fuzzily matches to united states .', 'tostr': 'filter_eq { all_rows ; country ; united states }'}], 'result': '10', 'i...
eq { count { filter_eq { all_rows ; country ; united states } } ; 10 } = true
select the rows whose country record fuzzily matches to united states . the number of such rows is 10 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'country_5': 5, 'united states_6': 6, '10_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'country_5': 'country', 'united states_6': 'united states', '10_7': '10'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'country_5': [0], 'united states_6': [0], '10_7': [2]}
['place', 'player', 'country', 'score', 'to par']
[['t1', 'ángel cabrera', 'argentina', '68 + 68 + 69 = 205', '- 11'], ['t1', 'kenny perry', 'united states', '68 + 67 + 70 = 205', '- 11'], ['3', 'chad campbell', 'united states', '65 + 70 + 72 = 207', '- 9'], ['4', 'jim furyk', 'united states', '66 + 74 + 68 = 208', '- 8'], ['5', 'steve stricker', 'united states', '72 ...
1963 vfl season
https://en.wikipedia.org/wiki/1963_VFL_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10783853-9.html.csv
unique
in the 1963 vfl season , when the crowd is over 20000 , the only time the venue is mcg is when the home team is melbourne .
{'scope': 'subset', 'row': '1', 'col': '5', 'col_other': '2', 'criterion': 'equal', 'value': 'mcg', 'subset': {'col': '6', 'criterion': 'greater_than', 'value': '20000'}}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': [{'func': 'filter_greater', 'args': ['all_rows', 'crowd', '20000'], 'result': None, 'ind': 0, 'tostr': 'filter_greater { all_rows ; crowd ; 20000 }', 'tointer': 'select the rows whose crowd record is greater than 20000 .'}, 'venue', 'm...
and { only { filter_eq { filter_greater { all_rows ; crowd ; 20000 } ; venue ; mcg } } ; eq { hop { filter_eq { filter_greater { all_rows ; crowd ; 20000 } ; venue ; mcg } ; home team score } ; 18.6 ( 114 ) } } = true
select the rows whose crowd record is greater than 20000 . among these rows , select the rows whose venue record fuzzily matches to mcg . there is only one such row in the table . the home team score record of this unqiue row is 18.6 ( 114 ) .
8
6
{'and_5': 5, 'result_6': 6, 'only_2': 2, 'filter_str_eq_1': 1, 'filter_greater_0': 0, 'all_rows_7': 7, 'crowd_8': 8, '20000_9': 9, 'venue_10': 10, 'mcg_11': 11, 'str_eq_4': 4, 'str_hop_3': 3, 'home team score_12': 12, '18.6 (114)_13': 13}
{'and_5': 'and', 'result_6': 'true', 'only_2': 'only', 'filter_str_eq_1': 'filter_str_eq', 'filter_greater_0': 'filter_greater', 'all_rows_7': 'all_rows', 'crowd_8': 'crowd', '20000_9': '20000', 'venue_10': 'venue', 'mcg_11': 'mcg', 'str_eq_4': 'str_eq', 'str_hop_3': 'str_hop', 'home team score_12': 'home team score', ...
{'and_5': [6], 'result_6': [], 'only_2': [5], 'filter_str_eq_1': [2, 3], 'filter_greater_0': [1], 'all_rows_7': [0], 'crowd_8': [0], '20000_9': [0], 'venue_10': [1], 'mcg_11': [1], 'str_eq_4': [5], 'str_hop_3': [4], 'home team score_12': [3], '18.6 (114)_13': [4]}
['home team', 'home team score', 'away team', 'away team score', 'venue', 'crowd', 'date']
[['melbourne', '18.6 ( 114 )', 'north melbourne', '9.10 ( 64 )', 'mcg', '23971', '22 june 1963'], ['geelong', '16.13 ( 109 )', 'richmond', '10.11 ( 71 )', 'kardinia park', '20681', '22 june 1963'], ['essendon', '4.16 ( 40 )', 'st kilda', '8.8 ( 56 )', 'windy hill', '24725', '22 june 1963'], ['collingwood', '11.6 ( 72 )...
peseta
https://en.wikipedia.org/wiki/Peseta
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-158806-3.html.csv
superlative
the peseta with the highest weight is the one with a diameter of 28 mm .
{'scope': 'all', 'col_superlative': '4', 'row_superlative': '8', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '3', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'weight'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; weight }'}, 'diameter'], 'result': '28 mm', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; weight } ; diameter }'}, '28 mm'], 'result': True, 'ind': 2, 'tost...
eq { hop { argmax { all_rows ; weight } ; diameter } ; 28 mm } = true
select the row whose weight record of all rows is maximum . the diameter record of this row is 28 mm .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'weight_5': 5, 'diameter_6': 6, '28 mm_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'weight_5': 'weight', 'diameter_6': 'diameter', '28 mm_7': '28 mm'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'weight_5': [0], 'diameter_6': [1], '28 mm_7': [2]}
['value', 'equiv', 'diameter', 'weight', 'composition']
[['1', '0.006 ( 0.01 )', '14 mm', '0.55 g', 'aluminium'], ['5', '0.03', '17.5 mm', '3 g', 'aluminium bronze'], ['10', '0.06', '18.5 mm', '4 g', 'cupronickel'], ['25', '0.15', '19.5 mm', '4.25 g', 'aluminium bronze'], ['50', '0.30', '20.5 mm', '5.60 g', 'cupronickel'], ['100', '0.60', '24.5 mm', '9.25 g', 'aluminium bro...
list of top association football goal scorers
https://en.wikipedia.org/wiki/List_of_top_association_football_goal_scorers
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11336844-1.html.csv
superlative
josef bican had the highest number of goals with 1468 scored during his time playing for the austria czech republic .
{'scope': 'all', 'col_superlative': '6', 'row_superlative': '1', 'value_mentioned': 'yes', 'max_or_min': 'max', 'other_col': '3', 'subset': None}
{'func': 'and', 'args': [{'func': 'eq', 'args': [{'func': 'max', 'args': ['all_rows', 'goals'], 'result': '1468', 'ind': 0, 'tostr': 'max { all_rows ; goals }', 'tointer': 'the maximum goals record of all rows is 1468 .'}, '1468'], 'result': True, 'ind': 1, 'tostr': 'eq { max { all_rows ; goals } ; 1468 }', 'tointer': ...
and { eq { max { all_rows ; goals } ; 1468 } ; eq { hop { argmax { all_rows ; goals } ; country } ; austria czech republic } } = true
the maximum goals record of all rows is 1468 . the country record of the row with superlative goals record is austria czech republic .
6
6
{'and_5': 5, 'result_6': 6, 'eq_1': 1, 'max_0': 0, 'all_rows_7': 7, 'goals_8': 8, '1468_9': 9, 'str_eq_4': 4, 'str_hop_3': 3, 'argmax_2': 2, 'all_rows_10': 10, 'goals_11': 11, 'country_12': 12, 'austria czech republic_13': 13}
{'and_5': 'and', 'result_6': 'true', 'eq_1': 'eq', 'max_0': 'max', 'all_rows_7': 'all_rows', 'goals_8': 'goals', '1468_9': '1468', 'str_eq_4': 'str_eq', 'str_hop_3': 'str_hop', 'argmax_2': 'argmax', 'all_rows_10': 'all_rows', 'goals_11': 'goals', 'country_12': 'country', 'austria czech republic_13': 'austria czech repu...
{'and_5': [6], 'result_6': [], 'eq_1': [5], 'max_0': [1], 'all_rows_7': [0], 'goals_8': [0], '1468_9': [1], 'str_eq_4': [5], 'str_hop_3': [4], 'argmax_2': [3], 'all_rows_10': [2], 'goals_11': [2], 'country_12': [3], 'austria czech republic_13': [4]}
['rank', 'name', 'country', 'years', 'matches', 'goals']
[['1', 'josef bican', 'austria czech republic', '1931 - 1956', '918', '1468'], ['2', 'gerd mã ¼ ller', 'germany', '1962 - 1983', '1216', '1461'], ['3', 'arthur friedenreich', 'brazil', '1909 - 1935', '1239', '1329'], ['4', 'pele', 'brazil', '1956 - 1990', '1375', '1284'], ['5', 'franz binder', 'austria germany', '1930 ...
liberty league
https://en.wikipedia.org/wiki/Liberty_League
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-1974482-1.html.csv
superlative
rochester institute of technology has the highest student enrollment of schools in the liberty league .
{'scope': 'all', 'col_superlative': '6', 'row_superlative': '5', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '1', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'enrollment'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; enrollment }'}, 'institution'], 'result': 'rochester institute of technology', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; enrollment } ; institution ...
eq { hop { argmax { all_rows ; enrollment } ; institution } ; rochester institute of technology } = true
select the row whose enrollment record of all rows is maximum . the institution record of this row is rochester institute of technology .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'enrollment_5': 5, 'institution_6': 6, 'rochester institute of technology_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'enrollment_5': 'enrollment', 'institution_6': 'institution', 'rochester institute of technology_7': 'rochester institute of technology'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'enrollment_5': [0], 'institution_6': [1], 'rochester institute of technology_7': [2]}
['institution', 'nickname', 'location', 'founded', 'type', 'enrollment', 'joined']
[['bard college', 'raptors', 'annandale - on - hudson , new york', '1860', 'private', '1958', '2011'], ['clarkson university', 'golden knights', 'potsdam , new york', '1896', 'private', '2848', '1995'], ['hobart college', 'statesmen', 'geneva , new york', '1822', 'private', '905', '1995'], ['rensselaer polytechnic inst...
1970 detroit lions season
https://en.wikipedia.org/wiki/1970_Detroit_Lions_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18733362-2.html.csv
majority
the 1970 detroit lions won the majority of their games .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'fuzzily_match', 'value': 'w', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'result', 'w'], 'result': True, 'ind': 0, 'tointer': 'for the result records of all rows , most of them fuzzily match to w .', 'tostr': 'most_eq { all_rows ; result ; w } = true'}
most_eq { all_rows ; result ; w } = true
for the result records of all rows , most of them fuzzily match to w .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'result_3': 3, 'w_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'result_3': 'result', 'w_4': 'w'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'result_3': [0], 'w_4': [0]}
['week', 'date', 'opponent', 'result', 'attendance']
[['1', 'september 20 , 1970', 'green bay packers', 'w 40 - 0', '56263'], ['2', 'september 27 , 1970', 'cincinnati bengals', 'w 38 - 3', '58202'], ['3', 'october 5 , 1970', 'chicago bears', 'w 28 - 14', '58210'], ['4', 'october 11 , 1970', 'washington redskins', 'l 31 - 10', '50414'], ['5', 'october 18 , 1970', 'clevela...
united states house of representatives elections , 1976
https://en.wikipedia.org/wiki/United_States_House_of_Representatives_elections%2C_1976
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-1341672-6.html.csv
unique
the only democratic candidate to be elected in the united states house of representatives elections in 1976 that was first elected before 1960 .
{'scope': 'subset', 'row': '2', 'col': '4', 'col_other': 'n/a', 'criterion': 'less_than', 'value': '1960', 'subset': {'col': '3', 'criterion': 'equal', 'value': 'democratic'}}
{'func': 'only', 'args': [{'func': 'filter_less', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'party', 'democratic'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; party ; democratic }', 'tointer': 'select the rows whose party record fuzzily matches to democratic .'}, 'first elected', '1960'], ...
only { filter_less { filter_eq { all_rows ; party ; democratic } ; first elected ; 1960 } } = true
select the rows whose party record fuzzily matches to democratic . among these rows , select the rows whose first elected record is less than 1960 . there is only one such row in the table .
3
3
{'only_2': 2, 'result_3': 3, 'filter_less_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'party_5': 5, 'democratic_6': 6, 'first elected_7': 7, '1960_8': 8}
{'only_2': 'only', 'result_3': 'true', 'filter_less_1': 'filter_less', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'party_5': 'party', 'democratic_6': 'democratic', 'first elected_7': 'first elected', '1960_8': '1960'}
{'only_2': [3], 'result_3': [], 'filter_less_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'party_5': [0], 'democratic_6': [0], 'first elected_7': [1], '1960_8': [1]}
['district', 'incumbent', 'party', 'first elected', 'result', 'candidates']
[['california 4', 'robert l leggett', 'democratic', '1962', 're - elected', 'robert l leggett ( d ) 50.2 % albert dehr ( r ) 49.8 %'], ['california 14', 'john j mcfall', 'democratic', '1956', 're - elected', 'john j mcfall ( d ) 72.5 % roger a blain ( r ) 27.5 %'], ['california 16', 'burt l talcott', 'republican', '196...
european film award for best short film
https://en.wikipedia.org/wiki/European_Film_Award_for_Best_Short_Film
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-12152327-4.html.csv
unique
prva plata was the only film nominated from bosnia and herzegovina country .
{'scope': 'all', 'row': '11', 'col': '4', 'col_other': '2', 'criterion': 'equal', 'value': 'bosnia and herzegovina', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'country', 'bosnia and herzegovina'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose country record fuzzily matches to bosnia and herzegovina .', 'tostr': 'filter_eq { all_rows ; country ; bosnia and herzegovi...
and { only { filter_eq { all_rows ; country ; bosnia and herzegovina } } ; eq { hop { filter_eq { all_rows ; country ; bosnia and herzegovina } ; film } ; prva plata } } = true
select the rows whose country record fuzzily matches to bosnia and herzegovina . there is only one such row in the table . the film record of this unqiue row is prva plata .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'country_7': 7, 'bosnia and herzegovina_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'film_9': 9, 'prva plata_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'country_7': 'country', 'bosnia and herzegovina_8': 'bosnia and herzegovina', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'film_9': 'film', 'prva plata_10': 'prva plata'}
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_str_eq_0': [1, 2], 'all_rows_6': [0], 'country_7': [0], 'bosnia and herzegovina_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'film_9': [2], 'prva plata_10': [3]}
['category', 'film', 'director ( s )', 'country', 'nominating festival']
[['short film 2005 prix uip', 'undressing my mother', 'ken wardrop', 'ireland', 'prix uip tampere'], ['short film 2005 prix uip', 'little terrorist', 'ashvin kumar', 'united kingdom', 'prix uip ghent'], ['short film 2005 prix uip', 'rendevú', 'ferenc cakó', 'hungary', 'prix uip valladolid'], ['short film 2005 prix uip'...
united states district court for the northern district of iowa
https://en.wikipedia.org/wiki/United_States_District_Court_for_the_Northern_District_of_Iowa
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11088781-2.html.csv
majority
the majority of the judges ' appointments were terminated because of death .
{'scope': 'all', 'col': '7', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'death', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'reason for termination', 'death'], 'result': True, 'ind': 0, 'tointer': 'for the reason for termination records of all rows , most of them fuzzily match to death .', 'tostr': 'most_eq { all_rows ; reason for termination ; death } = true'}
most_eq { all_rows ; reason for termination ; death } = true
for the reason for termination records of all rows , most of them fuzzily match to death .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'reason for termination_3': 3, 'death_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'reason for termination_3': 'reason for termination', 'death_4': 'death'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'reason for termination_3': [0], 'death_4': [0]}
['state', 'born / died', 'active service', 'chief judge', 'senior status', 'appointed by', 'reason for termination']
[['ia', '1833 - 1916', '1882 - 1903', '-', '-', 'arthur', 'retirement'], ['ia', '1846 - 1924', '1904 - 1921', '-', '1921 - 1924', 't roosevelt', 'death'], ['ia', '1864 - 1948', '1922 - 1943', '-', '1943 - 1948', 'harding', 'death'], ['ia', '1893 - 1970', '1944 - 1961', '1961', '1961 - 1970', 'f roosevelt', 'death'], ['...
athletics at the 1956 summer olympics - men 's long jump
https://en.wikipedia.org/wiki/Athletics_at_the_1956_Summer_Olympics_%E2%80%93_Men%27s_long_jump
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10676139-2.html.csv
majority
the majority of contestants in the 1956 summer olympics - men 's long jump recorded a best jump of over 7 meters .
{'scope': 'all', 'col': '5', 'most_or_all': 'most', 'criterion': 'greater_than', 'value': 'over 7 meters', 'subset': None}
{'func': 'most_greater', 'args': ['all_rows', 'best jump', 'over 7 meters'], 'result': True, 'ind': 0, 'tointer': 'for the best jump records of all rows , most of them are greater than over 7 meters .', 'tostr': 'most_greater { all_rows ; best jump ; over 7 meters } = true'}
most_greater { all_rows ; best jump ; over 7 meters } = true
for the best jump records of all rows , most of them are greater than over 7 meters .
1
1
{'most_greater_0': 0, 'result_1': 1, 'all_rows_2': 2, 'best jump_3': 3, 'over 7 meters_4': 4}
{'most_greater_0': 'most_greater', 'result_1': 'true', 'all_rows_2': 'all_rows', 'best jump_3': 'best jump', 'over 7 meters_4': 'over 7 meters'}
{'most_greater_0': [1], 'result_1': [], 'all_rows_2': [0], 'best jump_3': [0], 'over 7 meters_4': [0]}
['athlete name', 'jump 1', 'jump 2', 'jump 3', 'best jump']
[['gregory bell ( usa )', '6.98', '7.83', '7.77', '7.83 m'], ['john bennett ( usa )', '7.68', '7.61', 'x', '7.68 m'], ['jorma valkama ( fin )', '7.11', 'x', '7.48', '7.48 m'], ['dmitriy bondarenko ( urs )', '7.44', 'x', '7.13', '7.44 m'], ['karim olowu ( ngr )', '7.28', '6.77', '7.36', '7.36 m'], ['kazimierz kropidlows...
provinces of korea
https://en.wikipedia.org/wiki/Provinces_of_Korea
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-160510-3.html.csv
count
in the provinces of korea , chungcheong dialect is one of the korean dialects in haeso region .
{'scope': 'subset', 'criterion': 'equal', 'value': 'chungcheong dialect', 'result': '1', 'col': '8', 'subset': {'col': '7', 'criterion': 'equal', 'value': 'hoseo'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'region', 'hoseo'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; region ; hoseo }', 'tointer': 'select the rows whose region record fuzzily matches to hoseo .'}, 'korean dia...
eq { count { filter_eq { filter_eq { all_rows ; region ; hoseo } ; korean dialect ; chungcheong dialect } } ; 1 } = true
select the rows whose region record fuzzily matches to hoseo . among these rows , select the rows whose korean dialect record fuzzily matches to chungcheong dialect . the number of such rows is 1 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_str_eq_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'region_6': 6, 'hoseo_7': 7, 'korean dialect_8': 8, 'chungcheong dialect_9': 9, '1_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_str_eq_1': 'filter_str_eq', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'region_6': 'region', 'hoseo_7': 'hoseo', 'korean dialect_8': 'korean dialect', 'chungcheong dialect_9': 'chungcheong dialect', '1_10': '1'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_str_eq_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'region_6': [0], 'hoseo_7': [0], 'korean dialect_8': [1], 'chungcheong dialect_9': [1], '1_10': [3]}
['rr romaja', 'm - r romaja', 'hangul', 'hanja', 'name origin', 'capital', 'region', 'korean dialect', 'post - 1896 provinces']
[['chungcheong', "ch ' ungch ' ŏng", '충청도', '忠淸道', 'chungju ( 충주 忠州 ) , cheongju ( 청주 淸州 )', 'gongju', 'hoseo', 'chungcheong dialect', 'chungcheongbuk chungcheongnam'], ['gangwon', 'kangwŏn', '강원도', '江原道', 'gangneung ( 강릉 江陵 ) , wonju ( 원주 原州 )', 'wonju', 'gwandong ( yeongseo , yeongdong ( 1 ) )', 'gangwon dialect', 'g...
montenegro at the 2008 summer olympics
https://en.wikipedia.org/wiki/Montenegro_at_the_2008_Summer_Olympics
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15170808-7.html.csv
unique
the only player from pro recco is predrag jokić .
{'scope': 'all', 'row': '12', 'col': '5', 'col_other': '1', 'criterion': 'equal', 'value': 'pro recco', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'club', 'pro recco'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose club record fuzzily matches to pro recco .', 'tostr': 'filter_eq { all_rows ; club ; pro recco }'}], 'result': True, 'ind': 1, 'tostr': 'onl...
and { only { filter_eq { all_rows ; club ; pro recco } } ; eq { hop { filter_eq { all_rows ; club ; pro recco } ; name v t e } ; predrag jokić } } = true
select the rows whose club record fuzzily matches to pro recco . there is only one such row in the table . the name v t e record of this unqiue row is predrag jokić .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'club_7': 7, 'pro recco_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'name v t e_9': 9, 'predrag jokić_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'club_7': 'club', 'pro recco_8': 'pro recco', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'name v t e_9': 'name v t e', 'predrag jokić_10': 'predrag jokić'}
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_str_eq_0': [1, 2], 'all_rows_6': [0], 'club_7': [0], 'pro recco_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'name v t e_9': [2], 'predrag jokić_10': [3]}
['name v t e', 'pos', 'height', 'weight', 'club']
[['zdravko radić', 'gk', 'm', '-', 'vk primorac kotor'], ['draško brguljan', 'd', 'm', '-', 'vk primorac kotor'], ['vjekoslav pasković', 'd', 'm', '-', 'vk primorac kotor'], ['nikola vukčević', 'cf', 'm', '-', 'pvk jadran'], ['nikola janović', 'd', 'm', '-', 'posillipo naples'], ['milan tičić', 'cb', 'm', '-', 'pvk bud...
sunline
https://en.wikipedia.org/wiki/Sunline
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-2581397-4.html.csv
aggregation
on average , sunline raced with a weight of 55.6 kg between august 19 , 2000 , and march 24 , 2001 .
{'scope': 'all', 'col': '7', 'type': 'average', 'result': '55.6', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'weight ( kg )'], 'result': '55.6', 'ind': 0, 'tostr': 'avg { all_rows ; weight ( kg ) }'}, '55.6'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; weight ( kg ) } ; 55.6 } = true', 'tointer': 'the average of the weight ( kg ) record of...
round_eq { avg { all_rows ; weight ( kg ) } ; 55.6 } = true
the average of the weight ( kg ) record of all rows is 55.6 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'weight (kg)_4': 4, '55.6_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'weight (kg)_4': 'weight ( kg )', '55.6_5': '55.6'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'weight (kg)_4': [0], '55.6_5': [1]}
['result', 'date', 'race', 'venue', 'group', 'distance', 'weight ( kg )', 'jockey', 'winner / 2nd']
[['won', '19 august 2000', 'manikato stakes', 'moonee valley', 'g1', '1200 m', '55', 'g childs', '2nd - honour the name'], ['won', '3 september 2000', 'memsie stakes', 'caulfield', 'g2', '1400 m', '55.5', 'g childs', '2nd - umrum'], ['won', '16 september 2000', 'j f feehan stakes', 'moonee valley', 'g2', '1600 m', '55....
caroline vis
https://en.wikipedia.org/wiki/Caroline_Vis
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15335011-3.html.csv
comparative
caroline vis ' tournament in the usa took place 7 days before the tournament in canada .
{'row_1': '4', 'row_2': '5', 'col': '1', 'col_other': '2', 'relation': 'less', 'record_mentioned': 'yes', 'diff_result': None}
{'func': 'and', 'args': [{'func': 'less', 'args': [{'func': 'str_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'tournament', 'toronto , canada'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose tournament record fuzzily matches to toronto , canada .', 'tostr': 'filter_eq { all_rows ; tournam...
and { less { hop { filter_eq { all_rows ; tournament ; toronto , canada } ; date } ; hop { filter_eq { all_rows ; tournament ; paris , france } ; date } } ; and { eq { hop { filter_eq { all_rows ; tournament ; toronto , canada } ; date } ; 11 august 1997 } ; eq { hop { filter_eq { all_rows ; tournament ; paris , france...
select the rows whose tournament record fuzzily matches to toronto , canada . take the date record of this row . select the rows whose tournament record fuzzily matches to paris , france . take the date record of this row . the first record is less than the second record . the date record of the first row is 11 august ...
13
9
{'and_8': 8, 'result_9': 9, 'less_4': 4, 'str_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_10': 10, 'tournament_11': 11, 'toronto , canada_12': 12, 'date_13': 13, 'str_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_14': 14, 'tournament_15': 15, 'paris , france_16': 16, 'date_17': 17, 'and_7': 7, 'str_eq_5': 5, '11 august 199...
{'and_8': 'and', 'result_9': 'true', 'less_4': 'less', 'str_hop_2': 'str_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_10': 'all_rows', 'tournament_11': 'tournament', 'toronto , canada_12': 'toronto , canada', 'date_13': 'date', 'str_hop_3': 'str_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_14': 'all_rows'...
{'and_8': [9], 'result_9': [], 'less_4': [8], 'str_hop_2': [4, 5], 'filter_str_eq_0': [2], 'all_rows_10': [0], 'tournament_11': [0], 'toronto , canada_12': [0], 'date_13': [2], 'str_hop_3': [4, 6], 'filter_str_eq_1': [3], 'all_rows_14': [1], 'tournament_15': [1], 'paris , france_16': [1], 'date_17': [3], 'and_7': [8], ...
['date', 'tournament', 'surface', 'partnering', 'opponent in the final', 'score']
[['4 may 1992', 'waregem , belgium', 'clay', 'manon bollegraf', 'elena bryukhovets petra langrová', '6 - 4 , 6 - 3'], ['18 october 1993', 'budapest , hungary', 'carpet ( i )', 'inés gorrochategui', 'sandra cecchini patricia tarabini', '6 - 1 , 6 - 3'], ['4 august 1997', 'los angeles , usa', 'hard', 'yayuk basuki', 'lar...
portland timbers ( 2001 - 10 )
https://en.wikipedia.org/wiki/Portland_Timbers_%282001%E2%80%9310%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-14240688-1.html.csv
count
the boston timbers failed to qualify for the open cup three times .
{'scope': 'all', 'criterion': 'equal', 'value': 'did not qualify', 'result': '3', 'col': '6', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'open cup', 'did not qualify'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose open cup record fuzzily matches to did not qualify .', 'tostr': 'filter_eq { all_rows ; open cup ; did not qualify }'}], 'result':...
eq { count { filter_eq { all_rows ; open cup ; did not qualify } } ; 3 } = true
select the rows whose open cup record fuzzily matches to did not qualify . the number of such rows is 3 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'open cup_5': 5, 'did not qualify_6': 6, '3_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'open cup_5': 'open cup', 'did not qualify_6': 'did not qualify', '3_7': '3'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'open cup_5': [0], 'did not qualify_6': [0], '3_7': [2]}
['year', 'division', 'league', 'regular season', 'playoffs', 'open cup', 'avg attendance']
[['2001', '2', 'usl a - league', '4th , western', 'quarterfinals', 'did not qualify', '7169'], ['2002', '2', 'usl a - league', '2nd , pacific', '1st round', 'did not qualify', '6260'], ['2003', '2', 'usl a - league', '3rd , pacific', 'did not qualify', 'did not qualify', '5871'], ['2004', '2', 'usl a - league', '1st , ...
1984 denver broncos season
https://en.wikipedia.org/wiki/1984_Denver_Broncos_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-16729063-2.html.csv
ordinal
during the 1984 season , denver broncos ' game against the los angeles raiders recorded the highest attendance .
{'row': '9', 'col': '7', 'order': '1', 'col_other': '3', 'max_or_min': 'max_to_min', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmax', 'args': ['all_rows', 'attendance', '1'], 'result': None, 'ind': 0, 'tostr': 'nth_argmax { all_rows ; attendance ; 1 }'}, 'opponent'], 'result': 'los angeles raiders', 'ind': 1, 'tostr': 'hop { nth_argmax { all_rows ; attendance ; 1 } ; oppo...
eq { hop { nth_argmax { all_rows ; attendance ; 1 } ; opponent } ; los angeles raiders } = true
select the row whose attendance record of all rows is 1st maximum . the opponent record of this row is los angeles raiders .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmax_0': 0, 'all_rows_4': 4, 'attendance_5': 5, '1_6': 6, 'opponent_7': 7, 'los angeles raiders_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmax_0': 'nth_argmax', 'all_rows_4': 'all_rows', 'attendance_5': 'attendance', '1_6': '1', 'opponent_7': 'opponent', 'los angeles raiders_8': 'los angeles raiders'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmax_0': [1], 'all_rows_4': [0], 'attendance_5': [0], '1_6': [0], 'opponent_7': [1], 'los angeles raiders_8': [2]}
['week', 'date', 'opponent', 'result', 'game site', 'record', 'attendance']
[['1', 'september 2', 'cincinnati bengals', 'w 20 - 17', 'mile high stadium', '1 - 0', '74178'], ['2', 'september 9', 'chicago bears', 'l 0 - 27', 'soldier field', '1 - 1', '54335'], ['3', 'september 16', 'cleveland browns', 'w 24 - 14', 'cleveland stadium', '2 - 1', '61980'], ['4', 'september 23', 'kansas city chiefs'...
2007 - 08 russian volleyball super league
https://en.wikipedia.org/wiki/2007%E2%80%9308_Russian_Volleyball_Super_League
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-14015965-1.html.csv
count
in the 2007 - 08 russian volleyball super league , among the arenas with capacity 5000 , 2 of them are home arenas for team that were ranked 5 or higher in the previous season .
{'scope': 'subset', 'criterion': 'less_than_eq', 'value': '5', 'result': '2', 'col': '1', 'subset': {'col': '4', 'criterion': 'fuzzily_match', 'value': '5000'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_less_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'arena ( capacity )', '5000'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; arena ( capacity ) ; 5000 }', 'tointer': 'select the rows whose arena ( capacity ) record fuzzil...
eq { count { filter_less_eq { filter_eq { all_rows ; arena ( capacity ) ; 5000 } ; previous season ; 5 } } ; 2 } = true
select the rows whose arena ( capacity ) record fuzzily matches to 5000 . among these rows , select the rows whose previous season record is less than or equal to 5 . the number of such rows is 2 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_less_eq_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'arena (capacity)_6': 6, '5000_7': 7, 'previous season_8': 8, '5_9': 9, '2_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_less_eq_1': 'filter_less_eq', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'arena (capacity)_6': 'arena ( capacity )', '5000_7': '5000', 'previous season_8': 'previous season', '5_9': '5', '2_10': '2'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_less_eq_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'arena (capacity)_6': [0], '5000_7': [0], 'previous season_8': [1], '5_9': [1], '2_10': [3]}
['previous season', 'team', 'town', 'arena ( capacity )', 'website', 'head coach', 'foreign players ( max 2 )']
[['1', 'dynamo - tattransgaz kazan', 'kazan', 'basket - hall arena ( 7 000 )', 'wwwdinamottgru', 'viktor sidelnikov', 'lloy ball clayton stanley'], ['2', 'dynamo moscow', 'moscow', 'dynamo sports palace ( 5 000 )', 'wwwvcdynamoru', 'daniele bagnoli', 'matej černič alan barbosa domingos'], ['3', 'iskra', 'odintsovo', 'v...
football records in spain
https://en.wikipedia.org/wiki/Football_records_in_Spain
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17937080-8.html.csv
aggregation
the average goals per match for football records in spain is 1.052 .
{'scope': 'all', 'col': '7', 'type': 'average', 'result': '1.052', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'goals per match'], 'result': '1.052', 'ind': 0, 'tostr': 'avg { all_rows ; goals per match }'}, '1.052'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; goals per match } ; 1.052 } = true', 'tointer': 'the average of the goals per matc...
round_eq { avg { all_rows ; goals per match } ; 1.052 } = true
the average of the goals per match record of all rows is 1.052 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'goals per match_4': 4, '1.052_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'goals per match_4': 'goals per match', '1.052_5': '1.052'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'goals per match_4': [0], '1.052_5': [1]}
['rank', 'name', 'season', 'club', 'goals', 'apps', 'goals per match']
[['1', 'lionel messi', '2011 / 12', 'barcelona', '73', '60', '1.217'], ['2', 'lionel messi', '2012 / 13', 'barcelona', '60', '49', '1.224'], ['2', 'cristiano ronaldo', '2011 / 12', 'real madrid', '60', '55', '1.091'], ['4', 'cristiano ronaldo', '2012 / 13', 'real madrid', '55', '55', '1.000'], ['5', 'cristiano ronaldo'...
alien huang
https://en.wikipedia.org/wiki/Alien_Huang
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-23379776-6.html.csv
unique
already famous was the only one of these movies to be released in 2011 .
{'scope': 'all', 'row': '6', 'col': '1', 'col_other': '2', 'criterion': 'equal', 'value': '2011', 'subset': None}
{'func': 'and', 'args': [{'func': 'only', 'args': [{'func': 'filter_eq', 'args': ['all_rows', 'year', '2011'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose year record is equal to 2011 .', 'tostr': 'filter_eq { all_rows ; year ; 2011 }'}], 'result': True, 'ind': 1, 'tostr': 'only { filter_eq { all_rows ;...
and { only { filter_eq { all_rows ; year ; 2011 } } ; eq { hop { filter_eq { all_rows ; year ; 2011 } ; title of movie } ; already famous 《 一泡而紅 》 } } = true
select the rows whose year record is equal to 2011 . there is only one such row in the table . the title of movie record of this unqiue row is already famous 《 一泡而紅 》 .
6
5
{'and_4': 4, 'result_5': 5, 'only_1': 1, 'filter_eq_0': 0, 'all_rows_6': 6, 'year_7': 7, '2011_8': 8, 'str_eq_3': 3, 'str_hop_2': 2, 'title of movie_9': 9, 'already famous 《一泡而紅》_10': 10}
{'and_4': 'and', 'result_5': 'true', 'only_1': 'only', 'filter_eq_0': 'filter_eq', 'all_rows_6': 'all_rows', 'year_7': 'year', '2011_8': '2011', 'str_eq_3': 'str_eq', 'str_hop_2': 'str_hop', 'title of movie_9': 'title of movie', 'already famous 《一泡而紅》_10': 'already famous 《 一泡而紅 》'}
{'and_4': [5], 'result_5': [], 'only_1': [4], 'filter_eq_0': [1, 2], 'all_rows_6': [0], 'year_7': [0], '2011_8': [0], 'str_eq_3': [4], 'str_hop_2': [3], 'title of movie_9': [2], 'already famous 《一泡而紅》_10': [3]}
['year', 'title of movie', 'name of role', 'nature of role', 'co - artists', 'location']
[['2002', 'wild 《 狂放 》', 'lin yi - jie 林益捷', 'male lead', 'junior han , josephine anan xu', 'taiwan'], ['2002', 'holiday dreaming 《 夢遊夏威夷 》', 'xiao gui 小鬼', 'second male lead', 'tony yang , janine chang', 'taiwan'], ['2006', 'a flight to yesterday 《 飛往昨天的ci006 》', 'li zheng - fei 李正非', 'male lead', 'yuchen zhang', 'tai...
sun sun
https://en.wikipedia.org/wiki/Sun_Sun
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15624634-2.html.csv
count
the album sun sun was released in cd format four times when the label was alfa records .
{'scope': 'subset', 'criterion': 'equal', 'value': 'cd', 'result': '4', 'col': '4', 'subset': {'col': '3', 'criterion': 'equal', 'value': 'alfa records'}}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'label', 'alfa records'], 'result': None, 'ind': 0, 'tostr': 'filter_eq { all_rows ; label ; alfa records }', 'tointer': 'select the rows whose label record fuzzily matches to alfa record...
eq { count { filter_eq { filter_eq { all_rows ; label ; alfa records } ; format ; cd } } ; 4 } = true
select the rows whose label record fuzzily matches to alfa records . among these rows , select the rows whose format record fuzzily matches to cd . the number of such rows is 4 .
4
4
{'eq_3': 3, 'result_4': 4, 'count_2': 2, 'filter_str_eq_1': 1, 'filter_str_eq_0': 0, 'all_rows_5': 5, 'label_6': 6, 'alfa records_7': 7, 'format_8': 8, 'cd_9': 9, '4_10': 10}
{'eq_3': 'eq', 'result_4': 'true', 'count_2': 'count', 'filter_str_eq_1': 'filter_str_eq', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_5': 'all_rows', 'label_6': 'label', 'alfa records_7': 'alfa records', 'format_8': 'format', 'cd_9': 'cd', '4_10': '4'}
{'eq_3': [4], 'result_4': [], 'count_2': [3], 'filter_str_eq_1': [2], 'filter_str_eq_0': [1], 'all_rows_5': [0], 'label_6': [0], 'alfa records_7': [0], 'format_8': [1], 'cd_9': [1], '4_10': [3]}
['region', 'date', 'label', 'format', 'catalog']
[['japan', 'september 10 , 1986', 'alfa records', 'stereo lp', 'alr - 28085'], ['japan', 'september 10 , 1986', 'alfa records', 'cd', '32xa - 90'], ['japan', 'march 21 , 1992', 'alfa records', 'cd', 'alca - 285'], ['japan', 'august 31 , 1994', 'alfa records', 'cd', 'alca - 9015'], ['japan', 'august 29 , 1998', 'alfa re...
united states house of representatives elections , 1886
https://en.wikipedia.org/wiki/United_States_House_of_Representatives_elections%2C_1886
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1431467-4.html.csv
count
5 incumbents were re - elected during the 1886 house of representatives elections .
{'scope': 'all', 'criterion': 'equal', 'value': 're - elected', 'result': '5', 'col': '5', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'result', 're - elected'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose result record fuzzily matches to re - elected .', 'tostr': 'filter_eq { all_rows ; result ; re - elected }'}], 'result': '5', 'ind': 1,...
eq { count { filter_eq { all_rows ; result ; re - elected } } ; 5 } = true
select the rows whose result record fuzzily matches to re - elected . the number of such rows is 5 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'result_5': 5, 're - elected_6': 6, '5_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'result_5': 'result', 're - elected_6': 're - elected', '5_7': '5'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'result_5': [0], 're - elected_6': [0], '5_7': [2]}
['district', 'incumbent', 'party', 'first elected', 'result']
[['south carolina 1', 'samuel dibble', 'democratic', '1882', 're - elected'], ['south carolina 2', 'george d tillman', 'democratic', '1878', 're - elected'], ['south carolina 3', 'd wyatt aiken', 'democratic', '1876', 'retired democratic hold'], ['south carolina 4', 'william h perry', 'democratic', '1884', 're - electe...
volleyball at the 2004 summer olympics - men 's team rosters
https://en.wikipedia.org/wiki/Volleyball_at_the_2004_Summer_Olympics_%E2%80%93_Men%27s_team_rosters
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15859432-12.html.csv
majority
the weight for most of the men 's volleyball team at the 2004 summer olympics is under 100 .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'less_than', 'value': '100', 'subset': None}
{'func': 'most_less', 'args': ['all_rows', 'weight', '100'], 'result': True, 'ind': 0, 'tointer': 'for the weight records of all rows , most of them are less than 100 .', 'tostr': 'most_less { all_rows ; weight ; 100 } = true'}
most_less { all_rows ; weight ; 100 } = true
for the weight records of all rows , most of them are less than 100 .
1
1
{'most_less_0': 0, 'result_1': 1, 'all_rows_2': 2, 'weight_3': 3, '100_4': 4}
{'most_less_0': 'most_less', 'result_1': 'true', 'all_rows_2': 'all_rows', 'weight_3': 'weight', '100_4': '100'}
{'most_less_0': [1], 'result_1': [], 'all_rows_2': [0], 'weight_3': [0], '100_4': [0]}
['name', 'date of birth', 'height', 'weight', 'spike', 'block']
[['lloy ball', '17.02.1972', '203', '95', '351', '316'], ['erik sullivan', '09.08.1972', '193', '86', '340', '320'], ['phillip eatherton', '02.01.1974', '206', '101', '356', '335'], ['donald suxho', '21.02.1976', '196', '98', '337', '319'], ['william priddy', '01.10.1977', '196', '89', '353', '330'], ['ryan millar', '2...
united kingdom general election records
https://en.wikipedia.org/wiki/United_Kingdom_general_election_records
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-10107334-3.html.csv
comparative
alfred dobbs was elected before thomas mitchell was elected .
{'row_1': '1', 'row_2': '5', 'col': '4', 'col_other': '1', 'relation': 'less', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'less', 'args': [{'func': 'num_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'candidate', 'alfred dobbs'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose candidate record fuzzily matches to alfred dobbs .', 'tostr': 'filter_eq { all_rows ; candidate ; alfred dobbs }'}, 'year'], 're...
less { hop { filter_eq { all_rows ; candidate ; alfred dobbs } ; year } ; hop { filter_eq { all_rows ; candidate ; thomas mitchell } ; year } } = true
select the rows whose candidate record fuzzily matches to alfred dobbs . take the year record of this row . select the rows whose candidate record fuzzily matches to thomas mitchell . take the year record of this row . the first record is less than the second record .
5
5
{'less_4': 4, 'result_5': 5, 'num_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'candidate_7': 7, 'alfred dobbs_8': 8, 'year_9': 9, 'num_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'candidate_11': 11, 'thomas mitchell_12': 12, 'year_13': 13}
{'less_4': 'less', 'result_5': 'true', 'num_hop_2': 'num_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'candidate_7': 'candidate', 'alfred dobbs_8': 'alfred dobbs', 'year_9': 'year', 'num_hop_3': 'num_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'candidate_11': 'candidate',...
{'less_4': [5], 'result_5': [], 'num_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'candidate_7': [0], 'alfred dobbs_8': [0], 'year_9': [2], 'num_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'candidate_11': [1], 'thomas mitchell_12': [1], 'year_13': [3]}
['candidate', 'party', 'constituency', 'year', 'days']
[['alfred dobbs', 'labour', 'smethwick', '1945', '1 1'], ['john sunderland', 'labour', 'preston', '1945', '122 1'], ['john whittaker', 'labour', 'heywood and radcliffe', '1945', '137 1'], ['philip clarke', 'sinn féin', 'fermanagh and south tyrone', '1955', '152 3x'], ['thomas mitchell', 'sinn féin', 'mid - ulster', '19...
4th and long
https://en.wikipedia.org/wiki/4th_and_Long
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-22603701-1.html.csv
aggregation
the average age for the people in 4th and long is 25.6 .
{'scope': 'all', 'col': '4', 'type': 'average', 'result': '25.6', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'age'], 'result': '25.6', 'ind': 0, 'tostr': 'avg { all_rows ; age }'}, '25.6'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; age } ; 25.6 } = true', 'tointer': 'the average of the age record of all rows is 25.6 .'}
round_eq { avg { all_rows ; age } ; 25.6 } = true
the average of the age record of all rows is 25.6 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'age_4': 4, '25.6_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'age_4': 'age', '25.6_5': '25.6'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'age_4': [0], '25.6_5': [1]}
['position', 'name', 'jersey number', 'age', 'height', 'weight', 'college', 'result']
[['wr', 'jesse holley', '83', '25', "6 ' 3", '216', 'north carolina', 'winner in episode 10'], ['wr', 'andrew hawkins', '82', '22', "5 ' 7", '175', 'toledo', 'runners up in episode 10'], ['db', 'ahmaad smith', '25', '25', "6 ' 0", '196', 'tennessee state', 'runners up in episode 10'], ['db', 'eddie moten', '24', '27', ...
jacksonville jaguars draft history
https://en.wikipedia.org/wiki/Jacksonville_Jaguars_draft_history
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-15100419-11.html.csv
ordinal
scott starks was the third player that the jacksonville jaguars drafted .
{'row': '3', 'col': '1', 'order': '3', 'col_other': '4', 'max_or_min': 'min_to_max', 'value_mentioned': 'yes', 'scope': 'all', 'subset': None}
{'func': 'and', 'args': [{'func': 'eq', 'args': [{'func': 'nth_min', 'args': ['all_rows', 'round', '3'], 'result': '3', 'ind': 0, 'tostr': 'nth_min { all_rows ; round ; 3 }', 'tointer': 'the 3rd minimum round record of all rows is 3 .'}, '3'], 'result': True, 'ind': 1, 'tostr': 'eq { nth_min { all_rows ; round ; 3 } ; ...
and { eq { nth_min { all_rows ; round ; 3 } ; 3 } ; eq { hop { nth_argmin { all_rows ; round ; 3 } ; name } ; scott starks } } = true
the 3rd minimum round record of all rows is 3 . the name record of the row with 3rd minimum round record is scott starks .
6
6
{'and_5': 5, 'result_6': 6, 'eq_1': 1, 'nth_min_0': 0, 'all_rows_7': 7, 'round_8': 8, '3_9': 9, '3_10': 10, 'str_eq_4': 4, 'str_hop_3': 3, 'nth_argmin_2': 2, 'all_rows_11': 11, 'round_12': 12, '3_13': 13, 'name_14': 14, 'scott starks_15': 15}
{'and_5': 'and', 'result_6': 'true', 'eq_1': 'eq', 'nth_min_0': 'nth_min', 'all_rows_7': 'all_rows', 'round_8': 'round', '3_9': '3', '3_10': '3', 'str_eq_4': 'str_eq', 'str_hop_3': 'str_hop', 'nth_argmin_2': 'nth_argmin', 'all_rows_11': 'all_rows', 'round_12': 'round', '3_13': '3', 'name_14': 'name', 'scott starks_15':...
{'and_5': [6], 'result_6': [], 'eq_1': [5], 'nth_min_0': [1], 'all_rows_7': [0], 'round_8': [0], '3_9': [0], '3_10': [1], 'str_eq_4': [5], 'str_hop_3': [4], 'nth_argmin_2': [3], 'all_rows_11': [2], 'round_12': [2], '3_13': [2], 'name_14': [3], 'scott starks_15': [4]}
['round', 'pick', 'overall', 'name', 'position', 'college']
[['1', '21', '21', 'matt jones', 'wide receiver', 'arkansas'], ['2', '20', '52', 'khalif barnes', 'offensive tackle', 'washington'], ['3', '23', '87', 'scott starks', 'cornerback', 'wisconsin'], ['4', '26', '127', 'alvin pearman', 'running back', 'virginia'], ['5', '21', '157', 'gerald sensabaugh', 'safety', 'north car...
pulp and paper industry
https://en.wikipedia.org/wiki/Pulp_and_paper_industry
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-293465-1.html.csv
superlative
among the main countries that are in the pulp and paper industry , china produced the highest amount of material from raw wood in the year 2011 .
{'scope': 'all', 'col_superlative': '3', 'row_superlative': '1', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '2', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'production in 2011 ( 1000 ton )'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; production in 2011 ( 1000 ton ) }'}, 'country'], 'result': 'china', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; production in 201...
eq { hop { argmax { all_rows ; production in 2011 ( 1000 ton ) } ; country } ; china } = true
select the row whose production in 2011 ( 1000 ton ) record of all rows is maximum . the country record of this row is china .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'production in 2011 (1000 ton)_5': 5, 'country_6': 6, 'china_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'production in 2011 (1000 ton)_5': 'production in 2011 ( 1000 ton )', 'country_6': 'country', 'china_7': 'china'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'production in 2011 (1000 ton)_5': [0], 'country_6': [1], 'china_7': [2]}
['rank 2011', 'country', 'production in 2011 ( 1000 ton )', 'share 2011', 'rank 2010', 'production in 2010 ( 1000 ton )']
[['1', 'china', '99300', '24.9 %', '1', '92599'], ['2', 'united states', '75083', '18.8 %', '2', '75849'], ['3', 'japan', '26627', '6.7 %', '3', '27288'], ['4', 'germany', '22698', '5.7 %', '4', '23122'], ['5', 'canada', '12112', '3.0 %', '5', '12787'], ['6', 'south korea', '11492', '2.9 %', '8', '11120'], ['7', 'finla...
indiana high school athletics conferences : mid - eastern - northwestern
https://en.wikipedia.org/wiki/Indiana_High_School_Athletics_Conferences%3A_Mid-Eastern_%E2%80%93_Northwestern
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18942405-13.html.csv
aggregation
the average enrollment of schools in the indiana high school atheltics conferences is 519 .
{'scope': 'all', 'col': '4', 'type': 'average', 'result': '519', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'enrollment'], 'result': '519', 'ind': 0, 'tostr': 'avg { all_rows ; enrollment }'}, '519'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; enrollment } ; 519 } = true', 'tointer': 'the average of the enrollment record of all rows is 51...
round_eq { avg { all_rows ; enrollment } ; 519 } = true
the average of the enrollment record of all rows is 519 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'enrollment_4': 4, '519_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'enrollment_4': 'enrollment', '519_5': '519'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'enrollment_4': [0], '519_5': [1]}
['school', 'location', 'mascot', 'enrollment', 'ihsaa class', 'ihsaa football class', 'county']
[['bremen', 'bremen', 'lions', '495', 'aa', 'aa', '50 marshall'], ['culver community', 'culver', 'cavaliers', '287', 'a', 'a', '50 marshall'], ['glenn', 'walkerton', 'falcons', '605', 'aaa', 'aaa', '71 st joseph'], ['jimtown', 'elkhart', 'jimmies', '601', 'aaa', 'aaa', '20 elkhart'], ['knox community', 'knox', 'redskin...
french west african cup
https://en.wikipedia.org/wiki/French_West_African_Cup
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-12444503-1.html.csv
superlative
in the french west african cup , 1947 was the first year when asc jeanne d'arc was a runner-up .
{'scope': 'subset', 'col_superlative': '1', 'row_superlative': '1', 'value_mentioned': 'yes', 'max_or_min': 'min', 'other_col': '4', 'subset': {'col': '4', 'criterion': 'equal', 'value': "asc jeanne d'arc"}}
{'func': 'eq', 'args': [{'func': 'min', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'runner - up', "asc jeanne d'arc"], 'result': None, 'ind': 0, 'tostr': "filter_eq { all_rows ; runner - up ; asc jeanne d'arc }", 'tointer': "select the rows whose runner - up record fuzzily matches to asc jeanne d'arc ."}, ...
eq { min { filter_eq { all_rows ; runner - up ; asc jeanne d'arc } ; season } ; 1947 } = true
select the rows whose runner - up record fuzzily matches to asc jeanne d'arc . the minimum season record of these rows is 1947 .
3
3
{'eq_2': 2, 'result_3': 3, 'min_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'runner - up_5': 5, "asc jeanne d'arc_6": 6, 'season_7': 7, '1947_8': 8}
{'eq_2': 'eq', 'result_3': 'true', 'min_1': 'min', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'runner - up_5': 'runner - up', "asc jeanne d'arc_6": "asc jeanne d'arc", 'season_7': 'season', '1947_8': '1947'}
{'eq_2': [3], 'result_3': [], 'min_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'runner - up_5': [0], "asc jeanne d'arc_6": [0], 'season_7': [1], '1947_8': [2]}
['season', 'winner', 'score', 'runner - up', 'lost to eventual winner', 'lost to eventual runner - up']
[['1947', 'us gorée', '2 - 1', "asc jeanne d'arc", 'espoir saint - louis', 'espérance rufisque'], ['1948', 'foyer france sénégal', '4 - 0', "jeunesse club d'abidjan", 'saint - louisienne', 'racing club de conakry'], ['1949', 'racing club de dakar', '3 - 0', 'racing club de conakry', 'espoir saint - louis', 'usc bassam'...
2007 - 08 utah jazz season
https://en.wikipedia.org/wiki/2007%E2%80%9308_Utah_Jazz_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11964263-5.html.csv
count
all games of the utah jazz ' in the 2007 - 08 season were scheduled for the month of november .
{'scope': 'all', 'criterion': 'fuzzily_match', 'value': 'november', 'result': '16', 'col': '1', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'date', 'november'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose date record fuzzily matches to november .', 'tostr': 'filter_eq { all_rows ; date ; november }'}], 'result': '16', 'ind': 1, 'tostr': 'count ...
eq { count { filter_eq { all_rows ; date ; november } } ; 16 } = true
select the rows whose date record fuzzily matches to november . the number of such rows is 16 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'date_5': 5, 'november_6': 6, '16_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'date_5': 'date', 'november_6': 'november', '16_7': '16'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'date_5': [0], 'november_6': [0], '16_7': [2]}
['date', 'visitor', 'score', 'home', 'leading scorer', 'attendance', 'record']
[['november 1', 'rockets', 'l 95 - 106 ( ot )', 'jazz', 'boozer ( 30 )', '19911', '1 - 1'], ['november 3', 'warriors', 'w 133 - 110 ( ot )', 'jazz', 'williams ( 30 )', '19911', '2 - 1'], ['november 4', 'jazz', 'l 109 - 119 ( ot )', 'lakers', 'williams ( 26 )', '18997', '2 - 2'], ['november 7', 'cavaliers', 'w 103 - 101...
list of solar car teams
https://en.wikipedia.org/wiki/List_of_solar_car_teams
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1688640-4.html.csv
aggregation
63 is the total number of cars in the list of solar car teams .
{'scope': 'all', 'col': '2', 'type': 'sum', 'result': '63', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'sum', 'args': ['all_rows', 'number of cars'], 'result': '63', 'ind': 0, 'tostr': 'sum { all_rows ; number of cars }'}, '63'], 'result': True, 'ind': 1, 'tostr': 'round_eq { sum { all_rows ; number of cars } ; 63 } = true', 'tointer': 'the sum of the number of cars record of all r...
round_eq { sum { all_rows ; number of cars } ; 63 } = true
the sum of the number of cars record of all rows is 63 .
2
2
{'eq_1': 1, 'result_2': 2, 'sum_0': 0, 'all_rows_3': 3, 'number of cars_4': 4, '63_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'sum_0': 'sum', 'all_rows_3': 'all_rows', 'number of cars_4': 'number of cars', '63_5': '63'}
{'eq_1': [2], 'result_2': [], 'sum_0': [1], 'all_rows_3': [0], 'number of cars_4': [0], '63_5': [1]}
['year started', 'number of cars', 'current car', 'car', 'website']
[['1998', '7', 'b - 7', '77', 'english'], ['1992', '7', 'ã ‰ clipse 7', '92', 'french english'], ['1998', '6', 'esteban vi', '55', 'french english'], ['1992', '3', 'isun', '66', 'french english'], ['1997', '4', 'phoenix ii', '116', 'english'], ['1990', '10', 'midnight sun x', '24', 'english'], ['2008', '1', 'arctic sun...
new zealand national football team
https://en.wikipedia.org/wiki/New_Zealand_national_football_team
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1023035-3.html.csv
aggregation
the average goals scored across all players on the new zealand national football team is about 15 .
{'scope': 'all', 'col': '3', 'type': 'average', 'result': '15', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'goals'], 'result': '15', 'ind': 0, 'tostr': 'avg { all_rows ; goals }'}, '15'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; goals } ; 15 } = true', 'tointer': 'the average of the goals record of all rows is 15 .'}
round_eq { avg { all_rows ; goals } ; 15 } = true
the average of the goals record of all rows is 15 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'goals_4': 4, '15_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'goals_4': 'goals', '15_5': '15'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'goals_4': [0], '15_5': [1]}
['name', 'career', 'goals', 'caps', 'first cap', 'most recent cap']
[['vaughan coveny', '1992 - 2006', '28', '64', '7 june 1992', '4 june 2006'], ['shane smeltz', '2003 -', '23', '49', 'united states 9 june 2003', 'new caledonia 21 march 2013'], ['steve sumner', '1976 - 1988', '22', '58', 'burma 13 september 1976', '23 june 1988'], ['brian turner', '1967 - 1982', '21', '59', 'australia...
1988 england rugby union tour of australia and fiji
https://en.wikipedia.org/wiki/1988_England_rugby_union_tour_of_Australia_and_Fiji
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17058417-1.html.csv
superlative
the highest against was when the opposing team was australia .
{'scope': 'all', 'col_superlative': '2', 'row_superlative': '8', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '1', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'against'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; against }'}, 'opposing team'], 'result': 'australia', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; against } ; opposing team }'}, 'australia'], 'result': ...
eq { hop { argmax { all_rows ; against } ; opposing team } ; australia } = true
select the row whose against record of all rows is maximum . the opposing team record of this row is australia .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'against_5': 5, 'opposing team_6': 6, 'australia_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'against_5': 'against', 'opposing team_6': 'opposing team', 'australia_7': 'australia'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'against_5': [0], 'opposing team_6': [1], 'australia_7': [2]}
['opposing team', 'against', 'date', 'venue', 'status']
[['queensland country', '9', '17 may 1988', 'quarry hill rugby park , mackay', 'tour match'], ['queensland', '19', '22 may 1988', 'ballymore , brisbane', 'tour match'], ["queensland ' b '", '7', '25 may 1988', 'gold park , toowoomba', 'tour match'], ['australia', '22', '29 may 1988', 'ballymore , brisbane', 'first test...
heartland collegiate athletic conference
https://en.wikipedia.org/wiki/Heartland_Collegiate_Athletic_Conference
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-255205-1.html.csv
majority
in the heartland collegiate athletic conference , all of the institutions are private .
{'scope': 'all', 'col': '5', 'most_or_all': 'all', 'criterion': 'equal', 'value': 'private', 'subset': None}
{'func': 'all_str_eq', 'args': ['all_rows', 'type', 'private'], 'result': True, 'ind': 0, 'tointer': 'for the type records of all rows , all of them fuzzily match to private .', 'tostr': 'all_eq { all_rows ; type ; private } = true'}
all_eq { all_rows ; type ; private } = true
for the type records of all rows , all of them fuzzily match to private .
1
1
{'all_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'type_3': 3, 'private_4': 4}
{'all_str_eq_0': 'all_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'type_3': 'type', 'private_4': 'private'}
{'all_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'type_3': [0], 'private_4': [0]}
['institution', 'location', 'nickname', 'founded', 'type', 'enrollment', 'joined']
[['anderson university', 'anderson , indiana', 'ravens', '1917', 'private / church of god', '3065', '1987'], ['bluffton university', 'bluffton , ohio', 'beavers', '1899', 'private / mennonite', '1191', '1998'], ['college of mount st joseph', 'cincinnati , ohio', 'lions', '1920', 'private / catholic', '2259', '1998'], [...
vincenzo modica
https://en.wikipedia.org/wiki/Vincenzo_Modica
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-14056562-1.html.csv
comparative
vincenzo modico 's time in 1998 was faster than the time in 1999 .
{'row_1': '3', 'row_2': '4', 'col': '6', 'col_other': '1', 'relation': 'less', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'less', 'args': [{'func': 'str_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'year', '1998'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose year record fuzzily matches to 1998 .', 'tostr': 'filter_eq { all_rows ; year ; 1998 }'}, 'notes'], 'result': None, 'ind': 2, 'tostr': 'hop {...
less { hop { filter_eq { all_rows ; year ; 1998 } ; notes } ; hop { filter_eq { all_rows ; year ; 1999 } ; notes } } = true
select the rows whose year record fuzzily matches to 1998 . take the notes record of this row . select the rows whose year record fuzzily matches to 1999 . take the notes record of this row . the first record is less than the second record .
5
5
{'less_4': 4, 'result_5': 5, 'str_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'year_7': 7, '1998_8': 8, 'notes_9': 9, 'str_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'year_11': 11, '1999_12': 12, 'notes_13': 13}
{'less_4': 'less', 'result_5': 'true', 'str_hop_2': 'str_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'year_7': 'year', '1998_8': '1998', 'notes_9': 'notes', 'str_hop_3': 'str_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'year_11': 'year', '1999_12': '1999', 'notes_13': 'n...
{'less_4': [5], 'result_5': [], 'str_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'year_7': [0], '1998_8': [0], 'notes_9': [2], 'str_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'year_11': [1], '1999_12': [1], 'notes_13': [3]}
['year', 'competition', 'venue', 'position', 'event', 'notes']
[['1994', 'european championships', 'helsinki , finland', '11th', '10000 m', '28:17.24'], ['1997', 'world championships', 'athens , greece', '-', 'marathon', 'dnf'], ['1998', 'european championships', 'budapest , hungary', '3rd', 'marathon', '2:12:53'], ['1999', 'world championships', 'seville , spain', '2nd', 'maratho...
phil parsons
https://en.wikipedia.org/wiki/Phil_Parsons
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-2597876-1.html.csv
count
phil parsons had a total of one win from 1983 to 1995 in over 100 starts .
{'scope': 'all', 'criterion': 'equal', 'value': '1', 'result': '1', 'col': '3', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_eq', 'args': ['all_rows', 'wins', '1'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose wins record is equal to 1 .', 'tostr': 'filter_eq { all_rows ; wins ; 1 }'}], 'result': '1', 'ind': 1, 'tostr': 'count { filter_eq { all_rows ; wins ; 1...
eq { count { filter_eq { all_rows ; wins ; 1 } } ; 1 } = true
select the rows whose wins record is equal to 1 . the number of such rows is 1 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_eq_0': 0, 'all_rows_4': 4, 'wins_5': 5, '1_6': 6, '1_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_eq_0': 'filter_eq', 'all_rows_4': 'all_rows', 'wins_5': 'wins', '1_6': '1', '1_7': '1'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_eq_0': [1], 'all_rows_4': [0], 'wins_5': [0], '1_6': [0], '1_7': [2]}
['year', 'starts', 'wins', 'top 5', 'top 10', 'poles', 'avg start', 'avg finish', 'winnings', 'position', 'team ( s )']
[['1983', '5', '0', '0', '0', '0', '15.4', '23.8', '23850', '43rd', '66 johnny hayes racing'], ['1984', '23', '0', '0', '3', '0', '21.0', '19.3', '90700', '24th', '66 johnny hayes racing'], ['1985', '28', '0', '0', '4', '0', '20.5', '21.9', '104840', '21st', '66 jackson bros motorsports 17 hamby racing'], ['1986', '17'...
thiago alves ( tennis )
https://en.wikipedia.org/wiki/Thiago_Alves_%28tennis%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-14924949-3.html.csv
majority
most of the games thiago alves played in the singles were on a hard surface .
{'scope': 'all', 'col': '3', 'most_or_all': 'most', 'criterion': 'equal', 'value': 'hard', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'surface', 'hard'], 'result': True, 'ind': 0, 'tointer': 'for the surface records of all rows , most of them fuzzily match to hard .', 'tostr': 'most_eq { all_rows ; surface ; hard } = true'}
most_eq { all_rows ; surface ; hard } = true
for the surface records of all rows , most of them fuzzily match to hard .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'surface_3': 3, 'hard_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'surface_3': 'surface', 'hard_4': 'hard'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'surface_3': [0], 'hard_4': [0]}
['date', 'tournament', 'surface', 'opponent', 'score']
[['august 15 , 2005', 'manta , ecuador', 'hard', 'lesley joseph', '6 - 4 , 6 - 1'], ['october 10 , 2005', 'quito , ecuador', 'clay', 'marcos daniel', '1 - 6 , 7 - 6 ( 7 - 1 ) , 6 - 2'], ['july 31 , 2006', 'belo horizonte , brazil', 'hard', 'andré sá', '6 - 3 , 0 - 6 , 6 - 4'], ['august 14 , 2006', 'manta , ecuador', 'h...
2007 - 08 dallas stars season
https://en.wikipedia.org/wiki/2007%E2%80%9308_Dallas_Stars_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11801912-4.html.csv
comparative
the dallas stars had a game against the los angeles visitor earlier than toronto .
{'row_1': '8', 'row_2': '10', 'col': '1', 'col_other': '2', 'relation': 'less', 'record_mentioned': 'no', 'diff_result': None}
{'func': 'less', 'args': [{'func': 'str_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'visitor', 'los angeles'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose visitor record fuzzily matches to los angeles .', 'tostr': 'filter_eq { all_rows ; visitor ; los angeles }'}, 'date'], 'result': No...
less { hop { filter_eq { all_rows ; visitor ; los angeles } ; date } ; hop { filter_eq { all_rows ; visitor ; toronto } ; date } } = true
select the rows whose visitor record fuzzily matches to los angeles . take the date record of this row . select the rows whose visitor record fuzzily matches to toronto . take the date record of this row . the first record is less than the second record .
5
5
{'less_4': 4, 'result_5': 5, 'str_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_6': 6, 'visitor_7': 7, 'los angeles_8': 8, 'date_9': 9, 'str_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_10': 10, 'visitor_11': 11, 'toronto_12': 12, 'date_13': 13}
{'less_4': 'less', 'result_5': 'true', 'str_hop_2': 'str_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_6': 'all_rows', 'visitor_7': 'visitor', 'los angeles_8': 'los angeles', 'date_9': 'date', 'str_hop_3': 'str_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_10': 'all_rows', 'visitor_11': 'visitor', 'toronto_...
{'less_4': [5], 'result_5': [], 'str_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_6': [0], 'visitor_7': [0], 'los angeles_8': [0], 'date_9': [2], 'str_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_10': [1], 'visitor_11': [1], 'toronto_12': [1], 'date_13': [3]}
['date', 'visitor', 'score', 'home', 'decision', 'attendance', 'record']
[['november 2', 'phoenix', '5 - 0', 'dallas', 'smith', '18203', '5 - 6 - 2'], ['november 5', 'dallas', '5 - 0', 'anaheim', 'turco', '17174', '6 - 6 - 2'], ['november 7', 'dallas', '3 - 1', 'san jose', 'turco', '17496', '7 - 6 - 2'], ['november 8', 'dallas', '2 - 5', 'phoenix', 'turco', '12027', '7 - 7 - 2'], ['november...
list of game of the year awards
https://en.wikipedia.org/wiki/List_of_Game_of_the_Year_awards
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1851722-24.html.csv
majority
the system with the games that won the gamestop game of the year award the highest number of times was the playstation 3 .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'fuzzily_match', 'value': 'playstation 3', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'platform ( s )', 'playstation 3'], 'result': True, 'ind': 0, 'tointer': 'for the platform ( s ) records of all rows , most of them fuzzily match to playstation 3 .', 'tostr': 'most_eq { all_rows ; platform ( s ) ; playstation 3 } = true'}
most_eq { all_rows ; platform ( s ) ; playstation 3 } = true
for the platform ( s ) records of all rows , most of them fuzzily match to playstation 3 .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'platform (s)_3': 3, 'playstation 3_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'platform (s)_3': 'platform ( s )', 'playstation 3_4': 'playstation 3'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'platform (s)_3': [0], 'playstation 3_4': [0]}
['year', 'game', 'genre', 'platform ( s )', 'developer ( s )']
[['2002', 'metroid prime', '( first - person ) action - adventure', 'gamecube', 'retro studios , nintendo'], ['2003', 'the legend of zelda : the wind waker', 'action - adventure', 'gamecube', 'nintendo'], ['2004', 'world of warcraft', 'mmorpg', 'windows , mac os x', 'blizzard'], ['2005', 'resident evil 4', 'survival ho...
phoenix suns all - time roster
https://en.wikipedia.org/wiki/Phoenix_Suns_all-time_roster
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11482079-8.html.csv
count
two of the players had a total of 0 assists .
{'scope': 'all', 'criterion': 'equal', 'value': '0', 'result': '2', 'col': '6', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_eq', 'args': ['all_rows', 'asts', '0'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose asts record is equal to 0 .', 'tostr': 'filter_eq { all_rows ; asts ; 0 }'}], 'result': '2', 'ind': 1, 'tostr': 'count { filter_eq { all_rows ; asts ; 0...
eq { count { filter_eq { all_rows ; asts ; 0 } } ; 2 } = true
select the rows whose asts record is equal to 0 . the number of such rows is 2 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_eq_0': 0, 'all_rows_4': 4, 'asts_5': 5, '0_6': 6, '2_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_eq_0': 'filter_eq', 'all_rows_4': 'all_rows', 'asts_5': 'asts', '0_6': '0', '2_7': '2'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_eq_0': [1], 'all_rows_4': [0], 'asts_5': [0], '0_6': [0], '2_7': [2]}
['player', 'pos', 'from', 'school / country', 'rebs', 'asts']
[['rubén garcés', 'pf', '2000', 'providence', '22', '4'], ['diante garrett', 'g', '2012', 'iowa state', '15', '31'], ['pat garrity', 'pf', '1998', 'notre dame', '75', '18'], ['kenny gattison', 'pf', '1986', 'old dominion', '271', '36'], ['armen gilliam', 'pf', '1987', 'unlv', '1045', '132'], ['gordan giriček', 'g / f',...
elena reid
https://en.wikipedia.org/wiki/Elena_Reid
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-1433370-2.html.csv
count
elena reid recorded a win of 4 matches against other opponents .
{'scope': 'all', 'criterion': 'equal', 'value': 'win', 'result': '4', 'col': '1', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'res', 'win'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose res record fuzzily matches to win .', 'tostr': 'filter_eq { all_rows ; res ; win }'}], 'result': '4', 'ind': 1, 'tostr': 'count { filter_eq { all_r...
eq { count { filter_eq { all_rows ; res ; win } } ; 4 } = true
select the rows whose res record fuzzily matches to win . the number of such rows is 4 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'res_5': 5, 'win_6': 6, '4_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'res_5': 'res', 'win_6': 'win', '4_7': '4'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'res_5': [0], 'win_6': [0], '4_7': [2]}
['res', 'record', 'opponent', 'method', 'event', 'round', 'time', 'location']
[['loss', '4 - 1', 'catia vitoria', 'tko ( punches )', 'playboy fight night 4', '3', '3:59', 'new town , north dakota , united states'], ['win', '4 - 0', 'masako yoshida', 'tko ( punches )', 'eb - beatdown at 4 bears 5', '3', '2:35', 'new town , north dakota , united states'], ['win', '3 - 0', 'michelle waterson', 'tko...
1988 u.s. open ( golf )
https://en.wikipedia.org/wiki/1988_U.S._Open_%28golf%29
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17231125-6.html.csv
comparative
larry mize came in three places behind scott simpson .
{'row_1': '4', 'row_2': '5', 'col': '1', 'col_other': '2', 'relation': 'diff', 'record_mentioned': 'no', 'diff_result': {'diff_value': '3', 'bigger': 'row2'}}
{'func': 'eq', 'args': [{'func': 'diff', 'args': [{'func': 'str_hop', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'player', 'scott simpson'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose player record fuzzily matches to scott simpson .', 'tostr': 'filter_eq { all_rows ; player ; scott simpson...
eq { diff { hop { filter_eq { all_rows ; player ; scott simpson } ; place } ; hop { filter_eq { all_rows ; player ; larry mize } ; place } } ; -3 } = true
select the rows whose player record fuzzily matches to scott simpson . take the place record of this row . select the rows whose player record fuzzily matches to larry mize . take the place record of this row . the second record is 3 larger than the first record .
6
6
{'eq_5': 5, 'result_6': 6, 'diff_4': 4, 'str_hop_2': 2, 'filter_str_eq_0': 0, 'all_rows_7': 7, 'player_8': 8, 'scott simpson_9': 9, 'place_10': 10, 'str_hop_3': 3, 'filter_str_eq_1': 1, 'all_rows_11': 11, 'player_12': 12, 'larry mize_13': 13, 'place_14': 14, '-3_15': 15}
{'eq_5': 'eq', 'result_6': 'true', 'diff_4': 'diff', 'str_hop_2': 'str_hop', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_7': 'all_rows', 'player_8': 'player', 'scott simpson_9': 'scott simpson', 'place_10': 'place', 'str_hop_3': 'str_hop', 'filter_str_eq_1': 'filter_str_eq', 'all_rows_11': 'all_rows', 'player_12': 'p...
{'eq_5': [6], 'result_6': [], 'diff_4': [5], 'str_hop_2': [4], 'filter_str_eq_0': [2], 'all_rows_7': [0], 'player_8': [0], 'scott simpson_9': [0], 'place_10': [2], 'str_hop_3': [4], 'filter_str_eq_1': [3], 'all_rows_11': [1], 'player_12': [1], 'larry mize_13': [1], 'place_14': [3], '-3_15': [5]}
['place', 'player', 'country', 'score', 'to par']
[['1', 'curtis strange', 'united states', '70 + 67 + 69 = 206', '- 7'], ['t2', 'nick faldo', 'england', '72 + 67 + 68 = 207', '- 6'], ['t2', 'bob gilder', 'united states', '68 + 69 + 70 = 207', '- 6'], ['t2', 'scott simpson', 'united states', '69 + 66 + 72 = 207', '- 6'], ['t5', 'larry mize', 'united states', '69 + 67 ...
washington redskins draft history
https://en.wikipedia.org/wiki/Washington_Redskins_draft_history
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17100961-11.html.csv
majority
most of the players were the sixth pick in their round .
{'scope': 'all', 'col': '2', 'most_or_all': 'most', 'criterion': 'equal', 'value': '6', 'subset': None}
{'func': 'most_eq', 'args': ['all_rows', 'pick', '6'], 'result': True, 'ind': 0, 'tointer': 'for the pick records of all rows , most of them are equal to 6 .', 'tostr': 'most_eq { all_rows ; pick ; 6 } = true'}
most_eq { all_rows ; pick ; 6 } = true
for the pick records of all rows , most of them are equal to 6 .
1
1
{'most_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'pick_3': 3, '6_4': 4}
{'most_eq_0': 'most_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'pick_3': 'pick', '6_4': '6'}
{'most_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'pick_3': [0], '6_4': [0]}
['round', 'pick', 'overall', 'name', 'position', 'college']
[['1', '6', '6', 'spec sanders', 'hb', 'texas'], ['3', '6', '21', 'rufus deal', 'rb', 'auburn'], ['5', '6', '36', 'joe zeno', 'g', 'holy cross'], ['6', '6', '46', 'harley mccollum', 'ot', 'tulane'], ['7', '6', '56', 'bob fitch', 'e', 'minnesota'], ['8', '6', '66', 'george peters', 'rb', 'oregon state'], ['9', '6', '76'...
bh11960
https://en.wikipedia.org/wiki/BH11960
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-27155678-2.html.csv
aggregation
the genus/species have an combined average sequence similarity with bh11960 of 70 .
{'scope': 'all', 'col': '5', 'type': 'average', 'result': '70', 'subset': None}
{'func': 'round_eq', 'args': [{'func': 'avg', 'args': ['all_rows', 'sequence similarity'], 'result': '70', 'ind': 0, 'tostr': 'avg { all_rows ; sequence similarity }'}, '70'], 'result': True, 'ind': 1, 'tostr': 'round_eq { avg { all_rows ; sequence similarity } ; 70 } = true', 'tointer': 'the average of the sequence si...
round_eq { avg { all_rows ; sequence similarity } ; 70 } = true
the average of the sequence similarity record of all rows is 70 .
2
2
{'eq_1': 1, 'result_2': 2, 'avg_0': 0, 'all_rows_3': 3, 'sequence similarity_4': 4, '70_5': 5}
{'eq_1': 'eq', 'result_2': 'true', 'avg_0': 'avg', 'all_rows_3': 'all_rows', 'sequence similarity_4': 'sequence similarity', '70_5': '70'}
{'eq_1': [2], 'result_2': [], 'avg_0': [1], 'all_rows_3': [0], 'sequence similarity_4': [0], '70_5': [1]}
['genus / species', 'gene name', 'accession number', 'sequence length', 'sequence similarity']
[['bartonella henselae', 'hypothetical protein', 'bx897699 .1', '2805nt / 934aa', '100'], ['bartonella quintana', 'hypothetical protein', 'bx897700 .1', '2805nt / 934aa', '91'], ['bartonella grahamii', 'transcription regulator', 'cp001562 .1', '2799nt / 932aa', '87'], ['bartonella tribocorum', 'alanyl - trna synthetase...
united states house of representatives elections , 1930
https://en.wikipedia.org/wiki/United_States_House_of_Representatives_elections%2C_1930
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-1342359-41.html.csv
majority
most of the candidates were elected to the house of representatives in the 1920s .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'greater_than', 'value': '1920', 'subset': None}
{'func': 'most_greater', 'args': ['all_rows', 'first elected', '1920'], 'result': True, 'ind': 0, 'tointer': 'for the first elected records of all rows , most of them are greater than 1920 .', 'tostr': 'most_greater { all_rows ; first elected ; 1920 } = true'}
most_greater { all_rows ; first elected ; 1920 } = true
for the first elected records of all rows , most of them are greater than 1920 .
1
1
{'most_greater_0': 0, 'result_1': 1, 'all_rows_2': 2, 'first elected_3': 3, '1920_4': 4}
{'most_greater_0': 'most_greater', 'result_1': 'true', 'all_rows_2': 'all_rows', 'first elected_3': 'first elected', '1920_4': '1920'}
{'most_greater_0': [1], 'result_1': [], 'all_rows_2': [0], 'first elected_3': [0], '1920_4': [0]}
['district', 'incumbent', 'party', 'first elected', 'result', 'candidates']
[['tennessee 3', 'sam d mcreynolds', 'democratic', '1922', 're - elected', 'sam d mcreynolds ( d ) unopposed'], ['tennessee 4', 'cordell hull', 'democratic', '1922', 'retired to run for u s senate democratic hold', 'john ridley mitchell ( d ) unopposed'], ['tennessee 5', 'ewin l davis', 'democratic', '1918', 're - elec...
list of palatine locomotives and railbuses
https://en.wikipedia.org/wiki/List_of_Palatine_locomotives_and_railbuses
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-18843924-5.html.csv
superlative
the largest number of palatine loctomotives and railbuses are class l 1 .
{'scope': 'all', 'col_superlative': '4', 'row_superlative': '1', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '1', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'quantity'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; quantity }'}, 'class'], 'result': 'l 1', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; quantity } ; class }'}, 'l 1'], 'result': True, 'ind': 2, 'tostr': ...
eq { hop { argmax { all_rows ; quantity } ; class } ; l 1 } = true
select the row whose quantity record of all rows is maximum . the class record of this row is l 1 .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'quantity_5': 5, 'class_6': 6, 'l 1_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'quantity_5': 'quantity', 'class_6': 'class', 'l 1_7': 'l 1'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'quantity_5': [0], 'class_6': [1], 'l 1_7': [2]}
['class', 'railway number ( s )', 'drg number ( s )', 'quantity', 'year ( s ) of manufacture', 'axle arrangement ( uic ) bauart']
[['l 1', 'xi - xxii , xxviii', '99 081 - 99 092', '13', '1889 - 1907', 'c n2t'], ['l 2', 'xxiii - xxvii', '99 001 - 99 005', '5', '1903 - 1905', 'b n2t'], ['pts 2 / 2', 'xxx', '99 011', '1', '1910', 'b h2t'], ['pts 3 / 3 n', 'xxix', '99 093', '1', '1911', 'c n2t'], ['pts 3 / 3 h', 'xxxi - xxxiii', '99 101 - 99 103', '3...
baltimore city delegation
https://en.wikipedia.org/wiki/Baltimore_City_Delegation
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11873520-1.html.csv
ordinal
brian k mchale is the fourth earliest baltimore city delegate to take office .
{'row': '18', 'col': '5', 'order': '4', 'col_other': '3', 'max_or_min': 'min_to_max', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmin', 'args': ['all_rows', 'took office', '4'], 'result': None, 'ind': 0, 'tostr': 'nth_argmin { all_rows ; took office ; 4 }'}, 'delegate'], 'result': 'brian k mchale', 'ind': 1, 'tostr': 'hop { nth_argmin { all_rows ; took office ; 4 } ; delega...
eq { hop { nth_argmin { all_rows ; took office ; 4 } ; delegate } ; brian k mchale } = true
select the row whose took office record of all rows is 4th minimum . the delegate record of this row is brian k mchale .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmin_0': 0, 'all_rows_4': 4, 'took office_5': 5, '4_6': 6, 'delegate_7': 7, 'brian k mchale_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmin_0': 'nth_argmin', 'all_rows_4': 'all_rows', 'took office_5': 'took office', '4_6': '4', 'delegate_7': 'delegate', 'brian k mchale_8': 'brian k mchale'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmin_0': [1], 'all_rows_4': [0], 'took office_5': [0], '4_6': [0], 'delegate_7': [1], 'brian k mchale_8': [2]}
['district', 'place of birth', 'delegate', 'party', 'took office', 'committee']
[['40', 'baltimore city', 'frank conaway', 'democratic', '2006', 'judiciary'], ['40', 'alexandria city , alabama', 'barbara robinson', 'democratic', '2006', 'appropriations'], ['40', 'freeport , ny', 'shawn z tarrant', 'democratic', '2006', 'health and government operations'], ['41', 'baltimore city', 'jill p carter', ...
anthony kim
https://en.wikipedia.org/wiki/Anthony_Kim
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-11106562-3.html.csv
majority
of the tournaments that anthony kim participated in , he always had 0 wins .
{'scope': 'all', 'col': '2', 'most_or_all': 'all', 'criterion': 'equal', 'value': '0', 'subset': None}
{'func': 'all_eq', 'args': ['all_rows', 'wins', '0'], 'result': True, 'ind': 0, 'tointer': 'for the wins records of all rows , all of them are equal to 0 .', 'tostr': 'all_eq { all_rows ; wins ; 0 } = true'}
all_eq { all_rows ; wins ; 0 } = true
for the wins records of all rows , all of them are equal to 0 .
1
1
{'all_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'wins_3': 3, '0_4': 4}
{'all_eq_0': 'all_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'wins_3': 'wins', '0_4': '0'}
{'all_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'wins_3': [0], '0_4': [0]}
['tournament', 'wins', 'top - 5', 'top - 10', 'top - 25', 'events', 'cuts made']
[['masters tournament', '0', '1', '1', '2', '3', '2'], ['us open', '0', '0', '0', '2', '4', '4'], ['the open championship', '0', '1', '2', '2', '3', '2'], ['pga championship', '0', '0', '0', '0', '5', '3'], ['totals', '0', '2', '3', '6', '15', '11']]
atlantic coast collegiate hockey league
https://en.wikipedia.org/wiki/Atlantic_Coast_Collegiate_Hockey_League
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/1-16403890-1.html.csv
ordinal
among the members of the atlantic coast collegiate hockey league , george washington university is the third oldest member institution .
{'row': '4', 'col': '3', 'order': '3', 'col_other': '1', 'max_or_min': 'min_to_max', 'value_mentioned': 'no', 'scope': 'all', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'nth_argmin', 'args': ['all_rows', 'founded', '3'], 'result': None, 'ind': 0, 'tostr': 'nth_argmin { all_rows ; founded ; 3 }'}, 'institution'], 'result': 'george washington university', 'ind': 1, 'tostr': 'hop { nth_argmin { all_rows ; founded ; 3 } ; i...
eq { hop { nth_argmin { all_rows ; founded ; 3 } ; institution } ; george washington university } = true
select the row whose founded record of all rows is 3rd minimum . the institution record of this row is george washington university .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'nth_argmin_0': 0, 'all_rows_4': 4, 'founded_5': 5, '3_6': 6, 'institution_7': 7, 'george washington university_8': 8}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'nth_argmin_0': 'nth_argmin', 'all_rows_4': 'all_rows', 'founded_5': 'founded', '3_6': '3', 'institution_7': 'institution', 'george washington university_8': 'george washington university'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'nth_argmin_0': [1], 'all_rows_4': [0], 'founded_5': [0], '3_6': [0], 'institution_7': [1], 'george washington university_8': [2]}
['institution', 'location', 'founded', 'affiliation', 'enrollment', 'team nickname', 'primary conference', 'home rink']
[['duke university', 'durham , nc', '1838', 'private / non - sectarian', '6496', 'blue devils', 'atlantic coast conference ( d - i )', 'triangle sports plex'], ['elon university', 'elon , nc', '1889', 'private', '5225', 'phoenix', 'southern conference ( d - i )', 'triangle sports plex / greensboro ice house'], ['george...
2008 - 09 san antonio spurs season
https://en.wikipedia.org/wiki/2008%E2%80%9309_San_Antonio_Spurs_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-17288845-9.html.csv
count
during this period of the 2008-09 san antonio spurs spurs season , tim duncan led the san antonio spurs in rebounds on eleven occasions .
{'scope': 'all', 'criterion': 'fuzzily_match', 'value': 'tim duncan', 'result': '11', 'col': '6', 'subset': None}
{'func': 'eq', 'args': [{'func': 'count', 'args': [{'func': 'filter_str_eq', 'args': ['all_rows', 'high rebounds', 'tim duncan'], 'result': None, 'ind': 0, 'tointer': 'select the rows whose high rebounds record fuzzily matches to tim duncan .', 'tostr': 'filter_eq { all_rows ; high rebounds ; tim duncan }'}], 'result':...
eq { count { filter_eq { all_rows ; high rebounds ; tim duncan } } ; 11 } = true
select the rows whose high rebounds record fuzzily matches to tim duncan . the number of such rows is 11 .
3
3
{'eq_2': 2, 'result_3': 3, 'count_1': 1, 'filter_str_eq_0': 0, 'all_rows_4': 4, 'high rebounds_5': 5, 'tim duncan_6': 6, '11_7': 7}
{'eq_2': 'eq', 'result_3': 'true', 'count_1': 'count', 'filter_str_eq_0': 'filter_str_eq', 'all_rows_4': 'all_rows', 'high rebounds_5': 'high rebounds', 'tim duncan_6': 'tim duncan', '11_7': '11'}
{'eq_2': [3], 'result_3': [], 'count_1': [2], 'filter_str_eq_0': [1], 'all_rows_4': [0], 'high rebounds_5': [0], 'tim duncan_6': [0], '11_7': [2]}
['game', 'date', 'team', 'score', 'high points', 'high rebounds', 'high assists', 'location attendance', 'record']
[['58', 'march 1', 'portland', 'l 84 - 102 ( ot )', 'tony parker ( 15 )', 'fabricio oberto ( 6 )', 'george hill , tony parker ( 4 )', 'rose garden 20627', '39 - 19'], ['59', 'march 2', 'la clippers', 'w 106 - 78 ( ot )', 'tony parker ( 26 )', 'tim duncan ( 12 )', 'tony parker ( 10 )', 'staples center 17649', '40 - 19']...
2000 belarusian premier league
https://en.wikipedia.org/wiki/2000_Belarusian_Premier_League
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-14747235-1.html.csv
superlative
the stadium in the 2000 belarusian premier league that can hold the most people is the one that is located in minsk .
{'scope': 'all', 'col_superlative': '4', 'row_superlative': '6', 'value_mentioned': 'no', 'max_or_min': 'max', 'other_col': '3', 'subset': None}
{'func': 'str_eq', 'args': [{'func': 'str_hop', 'args': [{'func': 'argmax', 'args': ['all_rows', 'capacity'], 'result': None, 'ind': 0, 'tostr': 'argmax { all_rows ; capacity }'}, 'venue'], 'result': 'dinamo , minsk', 'ind': 1, 'tostr': 'hop { argmax { all_rows ; capacity } ; venue }'}, 'dinamo , minsk'], 'result': Tru...
eq { hop { argmax { all_rows ; capacity } ; venue } ; dinamo , minsk } = true
select the row whose capacity record of all rows is maximum . the venue record of this row is dinamo , minsk .
3
3
{'str_eq_2': 2, 'result_3': 3, 'str_hop_1': 1, 'argmax_0': 0, 'all_rows_4': 4, 'capacity_5': 5, 'venue_6': 6, 'dinamo , minsk_7': 7}
{'str_eq_2': 'str_eq', 'result_3': 'true', 'str_hop_1': 'str_hop', 'argmax_0': 'argmax', 'all_rows_4': 'all_rows', 'capacity_5': 'capacity', 'venue_6': 'venue', 'dinamo , minsk_7': 'dinamo , minsk'}
{'str_eq_2': [3], 'result_3': [], 'str_hop_1': [2], 'argmax_0': [1], 'all_rows_4': [0], 'capacity_5': [0], 'venue_6': [1], 'dinamo , minsk_7': [2]}
['team', 'location', 'venue', 'capacity', 'position in 1999']
[['bate', 'borisov', 'city stadium , borisov', '5500', '1'], ['slavia', 'mozyr', 'yunost , mozyr', '5500', '2'], ['gomel', 'gomel', 'central , gomel', '11800', '3'], ['dnepr - transmash', 'mogilev', 'spartak , mogilev', '11200', '4'], ['shakhtyor', 'soligorsk', 'stroitel', '5000', '5'], ['dinamo minsk', 'minsk', 'dinam...
1965 baltimore colts season
https://en.wikipedia.org/wiki/1965_Baltimore_Colts_season
https://raw.githubusercontent.com/wenhuchen/Table-Fact-Checking/master/data/all_csv/2-14977592-1.html.csv
majority
the baltimore colts won most of the games they played in the 1965 season .
{'scope': 'all', 'col': '4', 'most_or_all': 'most', 'criterion': 'fuzzily_match', 'value': 'w', 'subset': None}
{'func': 'most_str_eq', 'args': ['all_rows', 'result', 'w'], 'result': True, 'ind': 0, 'tointer': 'for the result records of all rows , most of them fuzzily match to w .', 'tostr': 'most_eq { all_rows ; result ; w } = true'}
most_eq { all_rows ; result ; w } = true
for the result records of all rows , most of them fuzzily match to w .
1
1
{'most_str_eq_0': 0, 'result_1': 1, 'all_rows_2': 2, 'result_3': 3, 'w_4': 4}
{'most_str_eq_0': 'most_str_eq', 'result_1': 'true', 'all_rows_2': 'all_rows', 'result_3': 'result', 'w_4': 'w'}
{'most_str_eq_0': [1], 'result_1': [], 'all_rows_2': [0], 'result_3': [0], 'w_4': [0]}
['week', 'date', 'opponent', 'result', 'record', 'game site', 'attendance']
[['1', 'september 19 , 1965', 'minnesota vikings', 'w 35 - 16', '1 - 0', 'memorial stadium', '56562'], ['2', 'september 26 , 1965', 'green bay packers', 'l 17 - 20', '1 - 1', 'milwaukee county stadium', '48130'], ['3', 'october 3 , 1965', 'san francisco 49ers', 'w 27 - 24', '2 - 1', 'memorial stadium', '58609'], ['4', ...