lhoestq HF Staff commited on
Commit
a4fbd34
·
1 Parent(s): 1cb3a69

add dataset_info in dataset metadata

Browse files
Files changed (1) hide show
  1. README.md +369 -1
README.md CHANGED
@@ -19,6 +19,374 @@ task_ids:
19
  - entity-linking-retrieval
20
  paperswithcode_id: null
21
  pretty_name: bprec
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
22
  ---
23
 
24
  # Dataset Card for [Dataset Name]
@@ -170,4 +538,4 @@ title = {Brand-Product Relation Extraction Using Heterogeneous Vector Space Repr
170
 
171
  ### Contributions
172
 
173
- Thanks to [@kldarek](https://github.com/kldarek) for adding this dataset.
 
19
  - entity-linking-retrieval
20
  paperswithcode_id: null
21
  pretty_name: bprec
22
+ dataset_info:
23
+ - config_name: default
24
+ features:
25
+ - name: id
26
+ dtype: int32
27
+ - name: text
28
+ dtype: string
29
+ - name: ner
30
+ sequence:
31
+ - name: source
32
+ struct:
33
+ - name: from
34
+ dtype: int32
35
+ - name: text
36
+ dtype: string
37
+ - name: to
38
+ dtype: int32
39
+ - name: type
40
+ dtype:
41
+ class_label:
42
+ names:
43
+ 0: PRODUCT_NAME
44
+ 1: PRODUCT_NAME_IMP
45
+ 2: PRODUCT_NO_BRAND
46
+ 3: BRAND_NAME
47
+ 4: BRAND_NAME_IMP
48
+ 5: VERSION
49
+ 6: PRODUCT_ADJ
50
+ 7: BRAND_ADJ
51
+ 8: LOCATION
52
+ 9: LOCATION_IMP
53
+ - name: target
54
+ struct:
55
+ - name: from
56
+ dtype: int32
57
+ - name: text
58
+ dtype: string
59
+ - name: to
60
+ dtype: int32
61
+ - name: type
62
+ dtype:
63
+ class_label:
64
+ names:
65
+ 0: PRODUCT_NAME
66
+ 1: PRODUCT_NAME_IMP
67
+ 2: PRODUCT_NO_BRAND
68
+ 3: BRAND_NAME
69
+ 4: BRAND_NAME_IMP
70
+ 5: VERSION
71
+ 6: PRODUCT_ADJ
72
+ 7: BRAND_ADJ
73
+ 8: LOCATION
74
+ 9: LOCATION_IMP
75
+ splits:
76
+ - name: banking
77
+ num_bytes: 446944
78
+ num_examples: 561
79
+ - name: cosmetics
80
+ num_bytes: 1565263
81
+ num_examples: 2384
82
+ - name: electro
83
+ num_bytes: 125999
84
+ num_examples: 382
85
+ - name: tele
86
+ num_bytes: 2739015
87
+ num_examples: 2391
88
+ download_size: 8006167
89
+ dataset_size: 4877221
90
+ - config_name: all
91
+ features:
92
+ - name: id
93
+ dtype: int32
94
+ - name: category
95
+ dtype: string
96
+ - name: text
97
+ dtype: string
98
+ - name: ner
99
+ sequence:
100
+ - name: source
101
+ struct:
102
+ - name: from
103
+ dtype: int32
104
+ - name: text
105
+ dtype: string
106
+ - name: to
107
+ dtype: int32
108
+ - name: type
109
+ dtype:
110
+ class_label:
111
+ names:
112
+ 0: PRODUCT_NAME
113
+ 1: PRODUCT_NAME_IMP
114
+ 2: PRODUCT_NO_BRAND
115
+ 3: BRAND_NAME
116
+ 4: BRAND_NAME_IMP
117
+ 5: VERSION
118
+ 6: PRODUCT_ADJ
119
+ 7: BRAND_ADJ
120
+ 8: LOCATION
121
+ 9: LOCATION_IMP
122
+ - name: target
123
+ struct:
124
+ - name: from
125
+ dtype: int32
126
+ - name: text
127
+ dtype: string
128
+ - name: to
129
+ dtype: int32
130
+ - name: type
131
+ dtype:
132
+ class_label:
133
+ names:
134
+ 0: PRODUCT_NAME
135
+ 1: PRODUCT_NAME_IMP
136
+ 2: PRODUCT_NO_BRAND
137
+ 3: BRAND_NAME
138
+ 4: BRAND_NAME_IMP
139
+ 5: VERSION
140
+ 6: PRODUCT_ADJ
141
+ 7: BRAND_ADJ
142
+ 8: LOCATION
143
+ 9: LOCATION_IMP
144
+ splits:
145
+ - name: train
146
+ num_bytes: 4937658
147
+ num_examples: 5718
148
+ download_size: 8006167
149
+ dataset_size: 4937658
150
+ - config_name: tele
151
+ features:
152
+ - name: id
153
+ dtype: int32
154
+ - name: category
155
+ dtype: string
156
+ - name: text
157
+ dtype: string
158
+ - name: ner
159
+ sequence:
160
+ - name: source
161
+ struct:
162
+ - name: from
163
+ dtype: int32
164
+ - name: text
165
+ dtype: string
166
+ - name: to
167
+ dtype: int32
168
+ - name: type
169
+ dtype:
170
+ class_label:
171
+ names:
172
+ 0: PRODUCT_NAME
173
+ 1: PRODUCT_NAME_IMP
174
+ 2: PRODUCT_NO_BRAND
175
+ 3: BRAND_NAME
176
+ 4: BRAND_NAME_IMP
177
+ 5: VERSION
178
+ 6: PRODUCT_ADJ
179
+ 7: BRAND_ADJ
180
+ 8: LOCATION
181
+ 9: LOCATION_IMP
182
+ - name: target
183
+ struct:
184
+ - name: from
185
+ dtype: int32
186
+ - name: text
187
+ dtype: string
188
+ - name: to
189
+ dtype: int32
190
+ - name: type
191
+ dtype:
192
+ class_label:
193
+ names:
194
+ 0: PRODUCT_NAME
195
+ 1: PRODUCT_NAME_IMP
196
+ 2: PRODUCT_NO_BRAND
197
+ 3: BRAND_NAME
198
+ 4: BRAND_NAME_IMP
199
+ 5: VERSION
200
+ 6: PRODUCT_ADJ
201
+ 7: BRAND_ADJ
202
+ 8: LOCATION
203
+ 9: LOCATION_IMP
204
+ splits:
205
+ - name: train
206
+ num_bytes: 2758147
207
+ num_examples: 2391
208
+ download_size: 4569708
209
+ dataset_size: 2758147
210
+ - config_name: electro
211
+ features:
212
+ - name: id
213
+ dtype: int32
214
+ - name: category
215
+ dtype: string
216
+ - name: text
217
+ dtype: string
218
+ - name: ner
219
+ sequence:
220
+ - name: source
221
+ struct:
222
+ - name: from
223
+ dtype: int32
224
+ - name: text
225
+ dtype: string
226
+ - name: to
227
+ dtype: int32
228
+ - name: type
229
+ dtype:
230
+ class_label:
231
+ names:
232
+ 0: PRODUCT_NAME
233
+ 1: PRODUCT_NAME_IMP
234
+ 2: PRODUCT_NO_BRAND
235
+ 3: BRAND_NAME
236
+ 4: BRAND_NAME_IMP
237
+ 5: VERSION
238
+ 6: PRODUCT_ADJ
239
+ 7: BRAND_ADJ
240
+ 8: LOCATION
241
+ 9: LOCATION_IMP
242
+ - name: target
243
+ struct:
244
+ - name: from
245
+ dtype: int32
246
+ - name: text
247
+ dtype: string
248
+ - name: to
249
+ dtype: int32
250
+ - name: type
251
+ dtype:
252
+ class_label:
253
+ names:
254
+ 0: PRODUCT_NAME
255
+ 1: PRODUCT_NAME_IMP
256
+ 2: PRODUCT_NO_BRAND
257
+ 3: BRAND_NAME
258
+ 4: BRAND_NAME_IMP
259
+ 5: VERSION
260
+ 6: PRODUCT_ADJ
261
+ 7: BRAND_ADJ
262
+ 8: LOCATION
263
+ 9: LOCATION_IMP
264
+ splits:
265
+ - name: train
266
+ num_bytes: 130205
267
+ num_examples: 382
268
+ download_size: 269917
269
+ dataset_size: 130205
270
+ - config_name: cosmetics
271
+ features:
272
+ - name: id
273
+ dtype: int32
274
+ - name: category
275
+ dtype: string
276
+ - name: text
277
+ dtype: string
278
+ - name: ner
279
+ sequence:
280
+ - name: source
281
+ struct:
282
+ - name: from
283
+ dtype: int32
284
+ - name: text
285
+ dtype: string
286
+ - name: to
287
+ dtype: int32
288
+ - name: type
289
+ dtype:
290
+ class_label:
291
+ names:
292
+ 0: PRODUCT_NAME
293
+ 1: PRODUCT_NAME_IMP
294
+ 2: PRODUCT_NO_BRAND
295
+ 3: BRAND_NAME
296
+ 4: BRAND_NAME_IMP
297
+ 5: VERSION
298
+ 6: PRODUCT_ADJ
299
+ 7: BRAND_ADJ
300
+ 8: LOCATION
301
+ 9: LOCATION_IMP
302
+ - name: target
303
+ struct:
304
+ - name: from
305
+ dtype: int32
306
+ - name: text
307
+ dtype: string
308
+ - name: to
309
+ dtype: int32
310
+ - name: type
311
+ dtype:
312
+ class_label:
313
+ names:
314
+ 0: PRODUCT_NAME
315
+ 1: PRODUCT_NAME_IMP
316
+ 2: PRODUCT_NO_BRAND
317
+ 3: BRAND_NAME
318
+ 4: BRAND_NAME_IMP
319
+ 5: VERSION
320
+ 6: PRODUCT_ADJ
321
+ 7: BRAND_ADJ
322
+ 8: LOCATION
323
+ 9: LOCATION_IMP
324
+ splits:
325
+ - name: train
326
+ num_bytes: 1596259
327
+ num_examples: 2384
328
+ download_size: 2417388
329
+ dataset_size: 1596259
330
+ - config_name: banking
331
+ features:
332
+ - name: id
333
+ dtype: int32
334
+ - name: category
335
+ dtype: string
336
+ - name: text
337
+ dtype: string
338
+ - name: ner
339
+ sequence:
340
+ - name: source
341
+ struct:
342
+ - name: from
343
+ dtype: int32
344
+ - name: text
345
+ dtype: string
346
+ - name: to
347
+ dtype: int32
348
+ - name: type
349
+ dtype:
350
+ class_label:
351
+ names:
352
+ 0: PRODUCT_NAME
353
+ 1: PRODUCT_NAME_IMP
354
+ 2: PRODUCT_NO_BRAND
355
+ 3: BRAND_NAME
356
+ 4: BRAND_NAME_IMP
357
+ 5: VERSION
358
+ 6: PRODUCT_ADJ
359
+ 7: BRAND_ADJ
360
+ 8: LOCATION
361
+ 9: LOCATION_IMP
362
+ - name: target
363
+ struct:
364
+ - name: from
365
+ dtype: int32
366
+ - name: text
367
+ dtype: string
368
+ - name: to
369
+ dtype: int32
370
+ - name: type
371
+ dtype:
372
+ class_label:
373
+ names:
374
+ 0: PRODUCT_NAME
375
+ 1: PRODUCT_NAME_IMP
376
+ 2: PRODUCT_NO_BRAND
377
+ 3: BRAND_NAME
378
+ 4: BRAND_NAME_IMP
379
+ 5: VERSION
380
+ 6: PRODUCT_ADJ
381
+ 7: BRAND_ADJ
382
+ 8: LOCATION
383
+ 9: LOCATION_IMP
384
+ splits:
385
+ - name: train
386
+ num_bytes: 453119
387
+ num_examples: 561
388
+ download_size: 749154
389
+ dataset_size: 453119
390
  ---
391
 
392
  # Dataset Card for [Dataset Name]
 
538
 
539
  ### Contributions
540
 
541
+ Thanks to [@kldarek](https://github.com/kldarek) for adding this dataset.