data_factory / benchmark /eval_utils.py
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#!/usr/bin/env python
from __future__ import annotations
import re
import unicodedata
_SINGLE_LETTER_RE = re.compile(r"^[A-Za-z]$")
_OPTION_LINE_RE = re.compile(r"(?im)(?:^|[\n\r])\s*([A-Z])\s*[\)\.\::、]")
_OPTION_LIST_RE = re.compile(
r"\b[A-Z]\b(?:\s*(?:,|,|/|、|&|\band\b|\bor\b)\s*\b[A-Z]\b)+",
flags=re.IGNORECASE,
)
_OPTION_RANGE_RE = re.compile(r"\b([A-Z])\s*-\s*([A-Z])\b", flags=re.IGNORECASE)
def detect_task_type(answer: str) -> str:
answer_text = str(answer or "").strip()
if _SINGLE_LETTER_RE.fullmatch(answer_text):
return "mcq"
return "fill_blank"
def parse_valid_options(question: str) -> set[str]:
text = str(question or "")
options: set[str] = set()
for match in _OPTION_LINE_RE.finditer(text):
options.add(match.group(1).upper())
list_text = re.sub(r"(?i)\s*,?\s*(?:and|or)\s*", ", ", text)
for match in _OPTION_LIST_RE.finditer(list_text):
letters = [letter.upper() for letter in re.findall(r"\b([A-Z])\b", match.group(0), flags=re.IGNORECASE)]
if len(letters) >= 2:
options.update(letters)
for match in _OPTION_RANGE_RE.finditer(text):
start = ord(match.group(1).upper())
end = ord(match.group(2).upper())
if start > end:
start, end = end, start
if 0 <= (end - start) <= 25:
for code in range(start, end + 1):
options.add(chr(code))
options = {ch for ch in options if "A" <= ch <= "Z"}
if not options:
return {chr(code) for code in range(ord("A"), ord("Z") + 1)}
return options
def _last_valid_match(response_text: str, pattern: str, valid_options: set[str]) -> str:
matches = list(re.finditer(pattern, response_text, flags=re.IGNORECASE | re.MULTILINE))
for match in reversed(matches):
candidate = match.group(1).upper()
if candidate in valid_options:
return candidate.lower()
return ""
def extract_mcq_pred(response_text: str, valid_options: set[str]) -> str:
text = str(response_text or "")
if not text:
return ""
patterns = [
r"\*\*\s*(?:final\s+answer|answer|option|choice)?\s*[::]?\s*([A-Z])\s*\*\*",
r"(?:^|\b)(?:final\s+answer|answer|option|choice)\s*(?:is|:|:)\s*(?:\*\*)?\s*([A-Z])\s*(?:\*\*)?",
r"(?:^|\b)(?:answer|option|choice)\s+([A-Z])\b",
r"(?:^|\b)(?:i\s+(?:choose|pick)|my\s+answer\s+is)\s*[::]?\s*(?:\*\*)?\s*([A-Z])\s*(?:\*\*)?",
r"^\s*(?:\*\*)?\s*([A-Z])\s*(?:\*\*)?\s*$",
r"^\s*[\(\[]?\s*(?:\*\*)?\s*([A-Z])\s*(?:\*\*)?\s*[\)\].,:;!\s]*$",
]
for pattern in patterns:
pred = _last_valid_match(text, pattern, valid_options)
if pred:
return pred
tail_matches = list(
re.finditer(
r"(?:\*\*)?\b([A-Z])\b(?:\*\*)?[\)\].,:;!?\s]*$",
text.strip(),
flags=re.IGNORECASE | re.MULTILINE,
)
)
for match in reversed(tail_matches):
candidate = match.group(1).upper()
if candidate in valid_options:
return candidate.lower()
return ""
def _is_edge_punct(ch: str) -> bool:
return unicodedata.category(ch).startswith("P")
def strip_edge_punctuation(text: str) -> str:
value = str(text or "")
start = 0
end = len(value)
while start < end and _is_edge_punct(value[start]):
start += 1
while end > start and _is_edge_punct(value[end - 1]):
end -= 1
return value[start:end]
def _strip_markdown_wrappers(text: str) -> str:
value = str(text or "").strip()
while value:
changed = False
for left, right in (("**", "**"), ("__", "__"), ("`", "`")):
if value.startswith(left) and value.endswith(right) and len(value) >= len(left) + len(right):
value = value[len(left) : len(value) - len(right)].strip()
changed = True
if not changed:
break
return value
def clean_fill_candidate(text: str) -> str:
value = _strip_markdown_wrappers(str(text or "").strip())
value = value.strip()
value = strip_edge_punctuation(value).strip()
return value
def extract_fill_pred(response_text: str) -> str:
text = str(response_text or "")
if not text:
return ""
patterns = [
r"\*\*\s*(?:final\s+answer|answer|答案)\s*[::]\s*(.*?)\s*\*\*",
r"(?:^|[\n\r])\s*(?:final\s+answer|answer|答案)\s*[::]\s*(.+)$",
]
for pattern in patterns:
matches = list(re.finditer(pattern, text, flags=re.IGNORECASE | re.MULTILINE))
for match in reversed(matches):
candidate = clean_fill_candidate(match.group(1))
if candidate:
return candidate
lines = [line.strip() for line in text.splitlines() if line.strip()]
if not lines:
return ""
candidate = lines[-1]
candidate = re.sub(r"^(?:[-*•>]+)\s*", "", candidate)
candidate = re.sub(r"^(?:final\s+answer|answer|答案)\s*[::]\s*", "", candidate, flags=re.IGNORECASE)
return clean_fill_candidate(candidate)
def normalize_fill_text(text: str) -> str:
value = unicodedata.normalize("NFKC", str(text or ""))
value = value.casefold()
value = re.sub(r"\s+", " ", value).strip()
value = strip_edge_punctuation(value).strip()
value = re.sub(r"\s+", " ", value).strip()
return value
def grade_response(question: str, answer: str, response_text: str) -> dict:
answer_text = str(answer or "").strip()
task_type = detect_task_type(answer_text)
if task_type == "mcq":
valid_options = parse_valid_options(question)
pred_raw = extract_mcq_pred(response_text, valid_options)
pred_norm = pred_raw.lower() if pred_raw else ""
answer_norm = answer_text.lower()
extract_ok = bool(pred_norm)
correct = bool(answer_norm) and pred_norm == answer_norm
pred = pred_norm
else:
pred_raw = extract_fill_pred(response_text)
pred_norm = normalize_fill_text(pred_raw)
answer_norm = normalize_fill_text(answer_text)
extract_ok = bool(pred_norm)
correct = bool(answer_norm) and pred_norm == answer_norm
pred = pred_raw
return {
"task_type": task_type,
"pred": pred,
"pred_raw": pred_raw,
"pred_norm": pred_norm,
"answer_norm": answer_norm,
"extract_ok": extract_ok,
"correct": correct,
}