Litcius/Paper detail

SpaDE

Eunseong Choi, Sukhyang Lee, Minjin Choi, Hyeseon Ko, Young-In Song, Jongwuk Lee

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management14 citationsDOIOpen Access PDF

Abstract

Sparse document representations have been widely used to retrieve relevant documents via exact lexical matching. Owing to the pre-computed inverted index, it supports fast ad-hoc search but incurs the vocabulary mismatch problem. Although recent neural ranking models using pre-trained language models can address this problem, they usually require expensive query inference costs, implying the trade-off between effectiveness and efficiency. Tackling the trade-off, we propose a novel uni-encoder ranking model, Sparse retriever using a Dual document Encoder (SpaDE), learning document representation via the dual encoder. Each encoder plays a central role in (i) adjusting the importance of terms to improve lexical matching and (ii) expanding additional terms to support semantic matching. Furthermore, our co-training strategy trains the dual encoder effectively and avoids unnecessary intervention in training each other. Experimental results on several benchmarks show that SpaDE outperforms existing uni-encoder ranking models.

Topics & Concepts

Computer scienceEncoderRanking (information retrieval)InferenceArtificial intelligenceVocabularySearch engine indexingLanguage modelDual (grammatical number)Matching (statistics)Machine learningInformation retrievalLiteratureOperating systemArtPhilosophyMathematicsStatisticsLinguisticsTopic ModelingInformation Retrieval and Search BehaviorText and Document Classification Technologies