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"""Cross-reference lexicon entries against their CLDF source data.
For each source (northeuralex, wold, sinotibetan), loads the source data,
then checks EVERY lexicon TSV entry attributed to that source.
Reports:
- Total entries checked, verified, not found per source
- Per-language match rates
- All languages with >5% mismatch rate with specific mismatched words
"""
from __future__ import annotations
import csv
import io
import os
import sys
import unicodedata
from collections import defaultdict
from pathlib import Path
# Ensure UTF-8 output on Windows
sys.stdout = io.TextIOWrapper(sys.stdout.buffer, encoding="utf-8", errors="replace")
sys.stderr = io.TextIOWrapper(sys.stderr.buffer, encoding="utf-8", errors="replace")
BASE = Path(r"C:\Users\alvin\hf-ancient-scripts")
SOURCES = BASE / "sources"
LEXICONS = BASE / "data" / "training" / "lexicons"
# ---- Helpers (same as expand_cldf_full.py) ----
def read_cldf_csv(path: Path) -> list[dict[str, str]]:
if not path.exists():
return []
with open(path, encoding="utf-8", newline="") as f:
return list(csv.DictReader(f))
def segments_to_ipa(segments: str) -> str:
if not segments or not segments.strip():
return ""
parts = segments.split()
cleaned = [p for p in parts if p not in ("^", "$", "+", "#", "_")]
return "".join(cleaned)
def normalize_ipa(ipa: str) -> str:
ipa = unicodedata.normalize("NFC", ipa)
ipa = ipa.replace("\u02c8", "").replace("\u02cc", "")
ipa = ipa.replace(".", "")
return ipa.strip()
def strip_tone_marks(ipa: str) -> str:
"""Aggressively strip combining tone/accent marks for fuzzy matching.
The extraction pipeline may strip these marks during IPA normalization,
so we use this for secondary matching when exact match fails.
"""
nfd = unicodedata.normalize("NFD", ipa)
# Remove combining tone/accent marks: grave, acute, circumflex, caron,
# double acute, double grave, tilde-above, macron (mid tone)
tone_marks = set("\u0300\u0301\u0302\u030C\u030B\u030F\u0303\u0304")
cleaned = "".join(c for c in nfd if c not in tone_marks)
return unicodedata.normalize("NFC", cleaned).strip()
# ---- Build source lookup tables ----
def build_northeuralex_lookup():
"""Build {iso_code: set((word, ipa))} from NorthEuraLex CLDF."""
cldf_dir = SOURCES / "northeuralex" / "cldf"
if not cldf_dir.exists():
print("ERROR: NorthEuraLex CLDF not found")
return {}, {}, {}
# Language_ID -> ISO code
lang_map = {}
for row in read_cldf_csv(cldf_dir / "languages.csv"):
nel_id = row["ID"]
iso = row.get("ISO639P3code", "")
if not iso:
iso = nel_id if len(nel_id) == 3 else ""
if iso:
lang_map[nel_id] = iso
# Parameter map for concept IDs
param_map = {}
for row in read_cldf_csv(cldf_dir / "parameters.csv"):
pid = row["ID"]
gloss = row.get("Concepticon_Gloss", row.get("Name", pid))
param_map[pid] = gloss
# Build lookup: {iso: set of (word, ipa)} using BOTH Value and Form as word keys
# The lexicon extraction stored either Value or Form depending on the run version,
# so we check against both to get accurate provenance verification.
lookup: dict[str, set[tuple[str, str]]] = defaultdict(set)
word_lookup: dict[str, set[str]] = defaultdict(set)
ipa_lookup: dict[str, set[str]] = defaultdict(set)
for row in read_cldf_csv(cldf_dir / "forms.csv"):
lang_id = row.get("Language_ID", "")
segments = row.get("Segments", "")
param_id = row.get("Parameter_ID", "")
iso = lang_map.get(lang_id)
if not iso:
continue
ipa = segments_to_ipa(segments)
if not ipa:
continue
ipa_norm = normalize_ipa(ipa)
if not ipa_norm:
continue
value = row.get("Value", "")
form = row.get("Form", "")
# Add both Value and Form as valid word keys for this (word, ipa) pair
if value:
lookup[iso].add((value, ipa_norm))
word_lookup[iso].add(value)
if form:
lookup[iso].add((form, ipa_norm))
word_lookup[iso].add(form)
ipa_lookup[iso].add(ipa_norm)
n_entries = sum(len(v) for v in lookup.values())
print(f" NorthEuraLex source: {n_entries:,} (word,ipa) pairs across {len(lookup)} languages")
return lookup, word_lookup, ipa_lookup
def build_wold_lookup():
"""Build {iso_code: set((word, ipa))} from WOLD CLDF."""
cldf_dir = SOURCES / "wold" / "cldf"
if not cldf_dir.exists():
print("ERROR: WOLD CLDF not found")
return {}, {}, {}
# Language map
wold_lang_map = {}
for row in read_cldf_csv(cldf_dir / "languages.csv"):
wold_id = row["ID"]
iso = row.get("ISO639P3code", "")
if iso:
wold_lang_map[wold_id] = iso
# Build lookup using BOTH Value and Form as word keys
# Value often has homonym markers "(1)" and spaces; Form uses underscores
# The lexicon may store either representation
lookup: dict[str, set[tuple[str, str]]] = defaultdict(set)
word_lookup: dict[str, set[str]] = defaultdict(set)
ipa_lookup: dict[str, set[str]] = defaultdict(set)
for row in read_cldf_csv(cldf_dir / "forms.csv"):
lang_id = row.get("Language_ID", "")
segments = row.get("Segments", "")
iso = wold_lang_map.get(lang_id)
if not iso:
continue
ipa = segments_to_ipa(segments)
if not ipa:
continue
ipa_norm = normalize_ipa(ipa)
if not ipa_norm:
continue
value = row.get("Value", "")
form = row.get("Form", "")
if value:
lookup[iso].add((value, ipa_norm))
word_lookup[iso].add(value)
if form:
lookup[iso].add((form, ipa_norm))
word_lookup[iso].add(form)
ipa_lookup[iso].add(ipa_norm)
n_entries = sum(len(v) for v in lookup.values())
print(f" WOLD source: {n_entries:,} (word,ipa) pairs across {len(lookup)} languages")
return lookup, word_lookup, ipa_lookup
def build_sinotibetan_lookup():
"""Build {iso_code: set((concept, ipa))} from Sino-Tibetan dump."""
dump_path = SOURCES / "sinotibetan" / "sinotibetan_dump.tsv"
if not dump_path.exists():
dump_path = SOURCES / "sinotibetan" / "dumps" / "sinotibetan.tsv"
if not dump_path.exists():
print("ERROR: Sino-Tibetan dump not found")
return {}, {}, {}
doculect_map = {
"Old_Chinese": "och",
"Japhug": "jya",
"Tibetan_Written": "bod",
"Old_Burmese": "obr",
"Jingpho": "kac",
"Lisu": "lis",
"Naxi": "nxq",
"Khaling": "klr",
"Limbu": "lif",
"Pumi_Lanping": "pmi",
"Qiang_Mawo": "qxs",
"Tujia": "tji",
"Dulong": "duu",
"Hakha": "cnh",
"Bai_Jianchuan": "bca",
}
lookup: dict[str, set[tuple[str, str]]] = defaultdict(set)
word_lookup: dict[str, set[str]] = defaultdict(set)
ipa_lookup: dict[str, set[str]] = defaultdict(set)
with open(dump_path, encoding="utf-8", newline="") as f:
reader = csv.DictReader(f, delimiter="\t")
for row in reader:
doculect = row.get("DOCULECT", "")
iso = doculect_map.get(doculect)
if not iso:
continue
concept = row.get("CONCEPT", "").strip()
ipa = row.get("IPA", "").strip()
if not ipa or not concept:
continue
ipa_norm = normalize_ipa(ipa)
if not ipa_norm:
continue
lookup[iso].add((concept, ipa_norm))
word_lookup[iso].add(concept)
ipa_lookup[iso].add(ipa_norm)
n_entries = sum(len(v) for v in lookup.values())
print(f" Sino-Tibetan source: {n_entries:,} (word,ipa) pairs across {len(lookup)} languages")
return lookup, word_lookup, ipa_lookup
# ---- Load lexicon entries by source ----
def load_lexicon_entries_by_source(source_name: str) -> dict[str, list[tuple[str, str, str]]]:
"""Load {iso: [(word, ipa, concept_id), ...]} for entries from a given source."""
result: dict[str, list[tuple[str, str, str]]] = defaultdict(list)
for fn in sorted(os.listdir(LEXICONS)):
if not fn.endswith(".tsv"):
continue
iso = fn[:-4]
fpath = LEXICONS / fn
with open(fpath, encoding="utf-8") as f:
header = f.readline().strip().split("\t")
if len(header) < 4:
continue
for line in f:
parts = line.rstrip("\n").split("\t")
if len(parts) < 4:
continue
word, ipa_col, sca, src = parts[0], parts[1], parts[2], parts[3]
concept_id = parts[4] if len(parts) > 4 else "-"
if src == source_name:
result[iso].append((word, ipa_col, concept_id))
return result
# ---- Verification logic ----
def verify_source(
source_name: str,
source_lookup: dict[str, set[tuple[str, str]]],
source_word_lookup: dict[str, set[str]],
source_ipa_lookup: dict[str, set[str]],
lexicon_entries: dict[str, list[tuple[str, str, str]]],
):
"""Verify all lexicon entries for a source. Returns stats dict."""
total_checked = 0
total_verified = 0
total_fuzzy = 0
total_not_found = 0
lang_stats: dict[str, dict] = {}
high_mismatch_details: dict[str, list] = {}
# Build fuzzy (tone-stripped) lookup for secondary matching
fuzzy_lookup: dict[str, set[tuple[str, str]]] = defaultdict(set)
for iso, pairs in source_lookup.items():
for word, ipa in pairs:
fuzzy_lookup[iso].add((word, strip_tone_marks(ipa)))
for iso, entries in sorted(lexicon_entries.items()):
src_pairs = source_lookup.get(iso, set())
src_words = source_word_lookup.get(iso, set())
src_ipas = source_ipa_lookup.get(iso, set())
fuzzy_pairs = fuzzy_lookup.get(iso, set())
checked = 0
verified = 0
fuzzy_verified = 0
word_only_match = 0
ipa_only_match = 0
both_match_not_paired = 0
no_match = 0
mismatched = []
for word, ipa, concept in entries:
checked += 1
total_checked += 1
# Primary check: exact (word, ipa) pair match
if (word, ipa) in src_pairs:
verified += 1
total_verified += 1
# Secondary check: fuzzy match (tone marks stripped from both sides)
elif (word, strip_tone_marks(ipa)) in fuzzy_pairs:
fuzzy_verified += 1
total_fuzzy += 1
else:
# Diagnostic checks
w_match = word in src_words
i_match = ipa in src_ipas
if w_match and i_match:
both_match_not_paired += 1
elif w_match and not i_match:
word_only_match += 1
elif i_match and not w_match:
ipa_only_match += 1
else:
no_match += 1
total_not_found += 1
if len(mismatched) < 30:
mismatched.append((word, ipa, concept, w_match, i_match))
if checked == 0:
continue
total_matched = verified + fuzzy_verified
match_rate = total_matched / checked * 100
mismatch_rate = (checked - total_matched) / checked * 100
lang_stats[iso] = {
"checked": checked,
"verified": verified,
"fuzzy": fuzzy_verified,
"total_matched": total_matched,
"word_only": word_only_match,
"ipa_only": ipa_only_match,
"both_not_paired": both_match_not_paired,
"no_match": no_match,
"match_rate": match_rate,
"mismatch_rate": mismatch_rate,
"in_source": iso in source_lookup,
}
if mismatch_rate > 5.0:
high_mismatch_details[iso] = mismatched
return {
"total_checked": total_checked,
"total_verified": total_verified,
"total_fuzzy": total_fuzzy,
"total_not_found": total_not_found,
"lang_stats": lang_stats,
"high_mismatch_details": high_mismatch_details,
}
def print_report(source_name: str, stats: dict):
"""Print a detailed report for a source."""
total = stats["total_checked"]
verified = stats["total_verified"]
fuzzy = stats.get("total_fuzzy", 0)
not_found = stats["total_not_found"]
total_matched = verified + fuzzy
match_pct = total_matched / total * 100 if total > 0 else 0
print(f"\n{'=' * 100}")
print(f" SOURCE: {source_name.upper()}")
print(f"{'=' * 100}")
print(f" Total entries checked: {total:>8,}")
print(f" Verified (exact match): {verified:>8,} ({verified/total*100 if total else 0:.2f}%)")
print(f" Verified (fuzzy IPA match): {fuzzy:>8,} (tone marks stripped)")
print(f" Total verified: {total_matched:>8,} ({match_pct:.2f}%)")
print(f" Unverified: {not_found:>8,} ({100 - match_pct:.2f}%)")
print(f" Languages checked: {len(stats['lang_stats']):>8}")
# Per-language summary table
print(f"\n {'Lang':<8} {'Checked':>8} {'Exact':>8} {'Fuzzy':>6} {'Total%':>7} {'WdOnly':>7} {'IPAOnly':>7} {'BothNP':>7} {'None':>5} {'Src':>3}")
print(f" {'-'*8} {'-'*8} {'-'*8} {'-'*6} {'-'*7} {'-'*7} {'-'*7} {'-'*7} {'-'*5} {'-'*3}")
for iso, ls in sorted(stats["lang_stats"].items(), key=lambda x: x[1]["mismatch_rate"], reverse=True):
flag = " ***" if ls["mismatch_rate"] > 5.0 else ""
in_src = "Y" if ls["in_source"] else "N"
print(
f" {iso:<8} {ls['checked']:>8,} {ls['verified']:>8,} {ls['fuzzy']:>6}"
f" {ls['match_rate']:>6.1f}%"
f" {ls['word_only']:>7} {ls['ipa_only']:>7} {ls['both_not_paired']:>7}"
f" {ls['no_match']:>5} {in_src:>3}{flag}"
)
# Detailed mismatch report for >5% languages
if stats["high_mismatch_details"]:
print(f"\n {'=' * 90}")
print(f" LANGUAGES WITH >5% MISMATCH RATE (up to 20 examples per language):")
print(f" {'=' * 90}")
for iso, mismatches in sorted(stats["high_mismatch_details"].items()):
ls = stats["lang_stats"][iso]
not_verified = ls["checked"] - ls["verified"]
print(
f"\n --- {iso} --- mismatch: {ls['mismatch_rate']:.1f}% ({not_verified}/{ls['checked']})"
f" [WdOnly={ls['word_only']}, IPAOnly={ls['ipa_only']}, BothNotPaired={ls['both_not_paired']}, None={ls['no_match']}]"
)
print(f" {'Word':<30} {'IPA(lexicon)':<30} {'Concept':<22} {'WdInSrc':>7} {'IPAInSrc':>8}")
for word, ipa, concept, w_match, i_match in mismatches[:20]:
w_str = "Y" if w_match else "N"
i_str = "Y" if i_match else "N"
word_d = (word[:27] + "...") if len(word) > 30 else word
ipa_d = (ipa[:27] + "...") if len(ipa) > 30 else ipa
concept_d = (concept[:19] + "...") if len(concept) > 22 else concept
print(f" {word_d:<30} {ipa_d:<30} {concept_d:<22} {w_str:>7} {i_str:>8}")
else:
print(f"\n No languages with >5% mismatch rate.")
# ---- Main ----
def main():
print("=" * 100)
print("LEXICON vs CLDF SOURCE CROSS-REFERENCE VERIFICATION")
print("=" * 100)
print(f"\nLexicon directory: {LEXICONS}")
print(f"Source directory: {SOURCES}")
# Build all source lookups
print("\nLoading source data...")
nel_lookup, nel_word, nel_ipa = build_northeuralex_lookup()
wold_lookup, wold_word, wold_ipa = build_wold_lookup()
st_lookup, st_word, st_ipa = build_sinotibetan_lookup()
# Load lexicon entries by source
print("\nScanning ALL lexicon files for source-attributed entries...")
nel_entries = load_lexicon_entries_by_source("northeuralex")
wold_entries = load_lexicon_entries_by_source("wold")
st_entries = load_lexicon_entries_by_source("sinotibetan")
print(f" northeuralex: {sum(len(v) for v in nel_entries.values()):,} entries in {len(nel_entries)} languages")
print(f" wold: {sum(len(v) for v in wold_entries.values()):,} entries in {len(wold_entries)} languages")
print(f" sinotibetan: {sum(len(v) for v in st_entries.values()):,} entries in {len(st_entries)} languages")
# Check language coverage
print("\n NorthEuraLex languages in lexicons:", sorted(nel_entries.keys()))
print(f" NorthEuraLex languages in source: {len(nel_lookup)} languages")
print(f" WOLD languages in lexicons: {sorted(wold_entries.keys())}")
print(f" WOLD languages in source: {len(wold_lookup)} languages")
print(f" SinoTibetan languages in lexicons: {sorted(st_entries.keys())}")
print(f" SinoTibetan languages in source: {len(st_lookup)} languages")
# Verify each source
print("\nVerifying northeuralex...")
nel_stats = verify_source("northeuralex", nel_lookup, nel_word, nel_ipa, nel_entries)
print("Verifying wold...")
wold_stats = verify_source("wold", wold_lookup, wold_word, wold_ipa, wold_entries)
print("Verifying sinotibetan...")
st_stats = verify_source("sinotibetan", st_lookup, st_word, st_ipa, st_entries)
# Print reports
print_report("northeuralex", nel_stats)
print_report("wold", wold_stats)
print_report("sinotibetan", st_stats)
# Grand summary
grand_checked = nel_stats["total_checked"] + wold_stats["total_checked"] + st_stats["total_checked"]
grand_exact = nel_stats["total_verified"] + wold_stats["total_verified"] + st_stats["total_verified"]
grand_fuzzy = nel_stats.get("total_fuzzy", 0) + wold_stats.get("total_fuzzy", 0) + st_stats.get("total_fuzzy", 0)
grand_verified = grand_exact + grand_fuzzy
grand_not_found = nel_stats["total_not_found"] + wold_stats["total_not_found"] + st_stats["total_not_found"]
print(f"\n{'=' * 100}")
print("GRAND SUMMARY")
print(f"{'=' * 100}")
print(f" Total entries checked across all 3 sources: {grand_checked:>10,}")
print(f" Verified (exact word+IPA match): {grand_exact:>10,}")
print(f" Verified (fuzzy: tone marks stripped): {grand_fuzzy:>10,}")
print(f" Total verified: {grand_verified:>10,}")
print(f" Unverified (no source match found): {grand_not_found:>10,}")
if grand_checked > 0:
print(f" Overall verification rate: {grand_verified/grand_checked*100:>9.2f}%")
print()
total_high = (
len(nel_stats["high_mismatch_details"])
+ len(wold_stats["high_mismatch_details"])
+ len(st_stats["high_mismatch_details"])
)
total_langs = (
len(nel_stats["lang_stats"])
+ len(wold_stats["lang_stats"])
+ len(st_stats["lang_stats"])
)
print(f" Languages with >5% unverified: {total_high} out of {total_langs} total")
# List all >5% languages
if total_high > 0:
print(f"\n Flagged languages (>5% unverified):")
for source_name, stats in [("northeuralex", nel_stats), ("wold", wold_stats), ("sinotibetan", st_stats)]:
for iso in sorted(stats["high_mismatch_details"].keys()):
ls = stats["lang_stats"][iso]
unverified = ls["checked"] - ls["total_matched"]
print(f" {source_name:15s} / {iso}: {ls['mismatch_rate']:.1f}% ({unverified}/{ls['checked']})")
print(f"\n{'=' * 100}")
if __name__ == "__main__":
main()
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