Publication | Open Access
Context-Aware Document Term Weighting for Ad-Hoc Search
127
Citations
32
References
2020
Year
Unknown Venue
EngineeringIntelligent Information RetrievalCorpus LinguisticsText MiningNatural Language ProcessingInformation RetrievalData ScienceComputational LinguisticsQuery ExpansionLanguage StudiesContent AnalysisSearch TechnologyKnowledge DiscoveryBag-of-words Document RepresentationsAd-hoc SearchKeyword SearchHdct WeightsEnable Training HdctVector Space ModelKeyword ExtractionLinguistics
Bag-of-words document representations play a fundamental role in modern search engines, but their power is limited by the shallow frequency-based term weighting scheme. This paper proposes HDCT, a context-aware document term weighting framework for document indexing and retrieval. It first estimates the semantic importance of a term in the context of each passage. These fine-grained term weights are then aggregated into a document-level bag-of-words representation, which can be stored into a standard inverted index for efficient retrieval. This paper also proposes two approaches that enable training HDCT without relevance labels. Experiments show that an index using HDCT weights significantly improved the retrieval accuracy compared to typical term-frequency and state-of-the-art embedding-based indexes.
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