Term frequency is a common method for identifying the importance of a term in a query or document. But it is a weak signal, especially when the frequency distribution is flat, such as in long queries or short documents where the text is of sentence/passage-length. This paper proposes a Deep Contextualized Term Weighting framework that learns to map BERT's contextualized text representations to context-aware term weights for sentences and passages. When applied to passages, DeepCT-Index produces term weights that can be stored in an ordinary inverted index for passage retrieval. When applied to query text, DeepCT-Query generates a weighted bag-of-words query. Both types of term weight can be used directly by typical first-stage retrieval algorithms. This is novel because most deep neural network based ranking models have higher computational costs, and thus are restricted to later-stage rankers. Experiments on four datasets demonstrate that DeepCT's deep contextualized text understanding greatly improves the accuracy of first-stage retrieval algorithms.
Context-Aware Sentence/Passage Term Importance Estimation For First Stage Retrieval
A Deep Contextualized Term Weighting framework uses BERT to improve first-stage retrieval accuracy by generating context-aware term weights for passages and queries.
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- 2019
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- arXiv 2019
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- 2
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- arxiv.org/abs/1910.10687v2ARXIV-DEFAULT
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