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170 lines
5.8 KiB
170 lines
5.8 KiB
import statistics
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import jieba
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from bert_score import score
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from nltk.translate.bleu_score import sentence_bleu
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from rouge_chinese import Rouge as Rouge_cn
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from sklearn.metrics import f1_score, precision_score, recall_score
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def bleu_score(preds: list, targets: list) -> dict:
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"""Calculate BLEU Score Metric
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The calculation includes BLEU-1 for unigram, BLEU-2 for bigram,
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BLEU-3 for trigram and BLEU-4 for 4-gram. Unigram evaluates the
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accuracy in word level, other n-gram evaluate the fluency in
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sentence level.
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"""
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bleu_scores = {"bleu1": 0, "bleu2": 0, "bleu3": 0, "bleu4": 0}
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cumulative_bleu = [0] * 4
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weights = [(1. / 1., 0., 0., 0.), (1. / 2., 1. / 2., 0., 0.), (1. / 3., 1. / 3., 1. / 3., 0.),
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(1. / 4., 1. / 4., 1. / 4., 1. / 4.)]
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for pred, target in zip(preds, targets):
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pred_list = (' '.join(jieba.cut(pred))).split()
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target_list = [(' '.join(jieba.cut(target))).split()]
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bleu = sentence_bleu(target_list, pred_list, weights=weights)
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cumulative_bleu = [a + b for a, b in zip(cumulative_bleu, bleu)]
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for i in range(len(cumulative_bleu)):
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bleu_scores[f"bleu{i+1}"] = cumulative_bleu[i] / len(preds)
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return bleu_scores
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def rouge_cn_score(preds: list, targets: list) -> dict:
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"""Calculate Chinese ROUGE Score Metric
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The calculation includes ROUGE-1 for unigram, ROUGE-2 for bigram
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and ROUGE-L. ROUGE-N evaluates the number of matching n-grams between
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the preds and targets. ROUGE-L measures the number of matching
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longest common subsequence (LCS) between preds and targets.
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"""
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rouge_scores = {"rouge1": {}, "rouge2": {}, "rougeL": {}}
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all_preds = []
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all_targets = []
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for pred, target in zip(preds, targets):
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pred_list = ' '.join(jieba.cut(pred))
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target_list = ' '.join(jieba.cut(target))
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all_preds.append(pred_list)
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all_targets.append(target_list)
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rouge_cn = Rouge_cn()
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rouge_avg = rouge_cn.get_scores(all_preds, all_targets, avg=True)
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rouge_scores["rouge1"] = rouge_avg["rouge-1"]["f"]
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rouge_scores["rouge2"] = rouge_avg["rouge-2"]["f"]
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rouge_scores["rougeL"] = rouge_avg["rouge-l"]["f"]
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return rouge_scores
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def distinct_score(preds: list) -> dict:
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"""Calculate Distinct Score Metric
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This metric refers to https://arxiv.org/abs/1510.03055.
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It evaluates the diversity of generation text by counting
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the unique n-grams.
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"""
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distinct_score = {"distinct": 0}
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cumulative_distinct = []
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for pred in preds:
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pred_seg_list = list(' '.join(jieba.cut(pred)))
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count_segs = len(pred_seg_list)
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unique_segs = set(pred_seg_list)
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count_unique_chars = len(unique_segs)
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cumulative_distinct.append(count_unique_chars / count_segs)
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distinct_score["distinct"] = statistics.mean(cumulative_distinct)
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return distinct_score
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def bert_score(preds: list, targets: list) -> dict:
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"""Calculate BERTScore Metric
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The BERTScore evaluates the semantic similarity between
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tokens of preds and targets with BERT.
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"""
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bert_score = {"bert_score": 0}
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pred_list = []
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target_list = []
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for pred, target in zip(preds, targets):
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pred_list.append(' '.join(jieba.cut(pred)))
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target_list.append(' '.join(jieba.cut(target)))
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_, _, F = score(pred_list, target_list, lang="zh", verbose=True)
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bert_score["bert_score"] = F.mean().item()
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return bert_score
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def calculate_precision_recall_f1(preds: list, targets: list) -> dict:
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"""Precision, Recall and F1-Score Calculation
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The calculation of precision, recall and f1-score is realized by counting
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the number f overlaps between the preds and target. The comparison length
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limited by the shorter one of preds and targets. This design is mainly
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considered for classifiction and extraction categories.
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"""
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precision_recall_f1 = {"precision": 0, "recall": 0, "f1_score": 0}
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precision_scores = []
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recall_scores = []
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f1_scores = []
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for pred, target in zip(preds, targets):
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pred_list = [char for char in pred]
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target_list = [char for char in target]
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target_labels = [1] * min(len(target_list), len(pred_list))
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pred_labels = [int(pred_list[i] == target_list[i]) for i in range(0, min(len(target_list), len(pred_list)))]
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precision_scores.append(precision_score(target_labels, pred_labels, zero_division=0))
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recall_scores.append(recall_score(target_labels, pred_labels, zero_division=0))
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f1_scores.append(f1_score(target_labels, pred_labels, zero_division=0))
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precision_recall_f1["precision"] = statistics.mean(precision_scores)
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precision_recall_f1["recall"] = statistics.mean(recall_scores)
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precision_recall_f1["f1_score"] = statistics.mean(f1_scores)
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return precision_recall_f1
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def precision(preds: list, targets: list) -> dict:
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"""Calculate Precision Metric
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(design for classifiction and extraction categories)
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Calculating precision by counting the number of overlaps between the preds and target.
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"""
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precision = {"precision": 0}
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precision["precision"] = calculate_precision_recall_f1(preds, targets)["precision"]
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return precision
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def recall(preds: list, targets: list) -> dict:
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"""Calculate Recall Metric
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(design for classifiction and extraction categories)
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Calculating recall by counting the number of overlaps between the preds and target.
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"""
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recall = {"recall": 0}
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recall["recall"] = calculate_precision_recall_f1(preds, targets)["recall"]
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return recall
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def F1_score(preds: list, targets: list) -> dict:
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"""Calculate F1-score Metric
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(design for classifiction and extraction categories)
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Calculating f1-score by counting the number of overlaps between the preds and target.
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"""
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f1 = {"f1_score": 0}
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f1["f1_score"] = calculate_precision_recall_f1(preds, targets)["f1_score"]
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return f1
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