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metrics.py
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metrics.py
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import re
from typing import List, Optional
from flair.data import Sentence
from flair.nn import Classifier
from rouge_score import rouge_scorer
from sentence_transformers import SentenceTransformer
from sklearn.metrics.pairwise import cosine_similarity
tagger = Classifier.load('ner')
encoder = SentenceTransformer('paraphrase-MiniLM-L6-v2')
def card(l):
encoded_l = encoder.encode(list(l))
cosine_sim = cosine_similarity(encoded_l)
soft_count = 1 / cosine_sim.sum(axis=1)
return soft_count.sum()
def heading_soft_recall(golden_headings: List[str], predicted_headings: List[str]):
"""
Given golden headings and predicted headings, compute soft recall.
- golden_headings: list of strings
- predicted_headings: list of strings
Ref: https://www.sciencedirect.com/science/article/pii/S0167865523000296
"""
g = set(golden_headings)
p = set(predicted_headings)
if len(p) == 0:
return 0
card_g = card(g)
card_p = card(p)
card_intersection = card_g + card_p - card(g.union(p))
return card_intersection / card_g
def extract_entities_from_list(l):
entities = []
for sent in l:
if len(sent) == 0:
continue
sent = Sentence(sent)
tagger.predict(sent)
entities.extend([e.text for e in sent.get_spans('ner')])
entities = list(set([e.lower() for e in entities]))
return entities
def heading_entity_recall(golden_entities: Optional[List[str]] = None,
predicted_entities: Optional[List[str]] = None,
golden_headings: Optional[List[str]] = None,
predicted_headings: Optional[List[str]] = None):
"""
Given golden entities and predicted entities, compute entity recall.
- golden_entities: list of strings or None; if None, extract from golden_headings
- predicted_entities: list of strings or None; if None, extract from predicted_headings
- golden_headings: list of strings or None
- predicted_headings: list of strings or None
"""
if golden_entities is None:
assert golden_headings is not None, "golden_headings and golden_entities cannot both be None."
golden_entities = extract_entities_from_list(golden_headings)
if predicted_entities is None:
assert predicted_headings is not None, "predicted_headings and predicted_entities cannot both be None."
predicted_entities = extract_entities_from_list(predicted_headings)
g = set(golden_entities)
p = set(predicted_entities)
if len(g) == 0:
return 1
else:
return len(g.intersection(p)) / len(g)
def article_entity_recall(golden_entities: Optional[List[str]] = None,
predicted_entities: Optional[List[str]] = None,
golden_article: Optional[str] = None,
predicted_article: Optional[str] = None):
"""
Given golden entities and predicted entities, compute entity recall.
- golden_entities: list of strings or None; if None, extract from golden_article
- predicted_entities: list of strings or None; if None, extract from predicted_article
- golden_article: string or None
- predicted_article: string or None
"""
if golden_entities is None:
assert golden_article is not None, "golden_article and golden_entities cannot both be None."
sentences = re.split(r'(?<!\w\.\w.)(?<![A-Z][a-z]\.)(?<=\.|\?)\s', golden_article)
golden_entities = extract_entities_from_list(sentences)
if predicted_entities is None:
assert predicted_article is not None, "predicted_article and predicted_entities cannot both be None."
sentences = re.split(r'(?<!\w\.\w.)(?<![A-Z][a-z]\.)(?<=\.|\?)\s', predicted_article)
predicted_entities = extract_entities_from_list(sentences)
g = set(golden_entities)
p = set(predicted_entities)
if len(g) == 0:
return 1
else:
return len(g.intersection(p)) / len(g)
def compute_rouge_scores(golden_answer: str, predicted_answer: str):
"""
Compute rouge score for given output and golden answer to compare text overlap.
- golden_answer: plain text of golden answer
- predicted_answer: plain text of predicted answer
"""
scorer = rouge_scorer.RougeScorer(['rouge1', 'rougeL'], use_stemmer=True)
scores = scorer.score(golden_answer, predicted_answer)
score_dict = {}
for metric, metric_score in scores.items():
score_dict[f'{metric.upper()}_precision'] = metric_score.precision
score_dict[f'{metric.upper()}_recall'] = metric_score.recall
score_dict[f'{metric.upper()}_f1'] = metric_score.fmeasure
return score_dict