Doc2Query-:当Less is More

Mitko Gospodinov, Sean MacAvaney, C. Macdonald
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引用次数: 11

摘要

Doc2Query——在使用序列到序列模型建立索引之前扩展文档内容的过程——已经成为提高搜索引擎第一阶段检索效率的重要技术。然而,已知序列到序列模型容易产生源文本中不存在的“幻觉”内容。我们认为,Doc2Query确实容易产生幻觉,这最终会损害检索效率并使索引大小膨胀。在这项工作中,我们将探索在建立索引之前过滤掉这些有害查询的技术。我们发现,使用关联模型去除低质量查询可以将Doc2Query的检索效率提高16%,同时将平均查询执行时间减少23%,将索引大小减少33%。我们在https://github.com/terrierteam/pyterrier_doc2query上发布了代码、数据和现场演示,以方便复制和进一步探索。
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Doc2Query-: When Less is More
Doc2Query -- the process of expanding the content of a document before indexing using a sequence-to-sequence model -- has emerged as a prominent technique for improving the first-stage retrieval effectiveness of search engines. However, sequence-to-sequence models are known to be prone to"hallucinating"content that is not present in the source text. We argue that Doc2Query is indeed prone to hallucination, which ultimately harms retrieval effectiveness and inflates the index size. In this work, we explore techniques for filtering out these harmful queries prior to indexing. We find that using a relevance model to remove poor-quality queries can improve the retrieval effectiveness of Doc2Query by up to 16%, while simultaneously reducing mean query execution time by 23% and cutting the index size by 33%. We release the code, data, and a live demonstration to facilitate reproduction and further exploration at https://github.com/terrierteam/pyterrier_doc2query.
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