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from typing import List, Tuple |
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import itertools |
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from sklearn.metrics.pairwise import cosine_similarity |
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import numpy as np |
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def mmr(doc_embedding: np.ndarray, |
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word_embeddings: np.ndarray, |
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words: List[str], |
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top_n: int = 5, |
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diversity: float = 0.9) -> List[Tuple[str, float]]: |
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""" Calculate Maximal Marginal Relevance (MMR) |
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between candidate keywords and the document. |
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MMR considers the similarity of keywords/keyphrases with the |
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document, along with the similarity of already selected |
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keywords and keyphrases. This results in a selection of keywords |
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that maximize their within diversity with respect to the document. |
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Arguments: |
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doc_embedding: The document embeddings |
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word_embeddings: The embeddings of the selected candidate keywords/phrases |
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words: The selected candidate keywords/keyphrases |
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top_n: The number of keywords/keyhprases to return |
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diversity: How diverse the select keywords/keyphrases are. |
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Values between 0 and 1 with 0 being not diverse at all |
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and 1 being most diverse. |
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Returns: |
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List[Tuple[str, float]]: The selected keywords/keyphrases with their distances |
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""" |
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word_doc_similarity = cosine_similarity(word_embeddings, doc_embedding) |
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word_similarity = cosine_similarity(word_embeddings) |
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keywords_idx = [np.argmax(word_doc_similarity)] |
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candidates_idx = [i for i in range(len(words)) if i != keywords_idx[0]] |
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for _ in range(top_n - 1): |
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candidate_similarities = word_doc_similarity[candidates_idx, :] |
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target_similarities = np.max(word_similarity[candidates_idx][:, keywords_idx], axis=1) |
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mmr = (1-diversity) * candidate_similarities - diversity * target_similarities.reshape(-1, 1) |
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mmr_idx = candidates_idx[np.argmax(mmr)] |
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keywords_idx.append(mmr_idx) |
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candidates_idx.remove(mmr_idx) |
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return [(words[idx], round(float(word_doc_similarity.reshape(1, -1)[0][idx]), 4)) for idx in keywords_idx] |