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SparseEmbed: Learning Sparse Lexical Representations with Contextual Embeddings for Retrieval

Weize Kong, Jeffrey M. Dudek, Cheng Li, Mingyang Zhang, Michael Bendersky

202312 citationsDOIOpen Access PDF

Abstract

In dense retrieval, prior work has largely improved retrieval effectiveness using multi-vector dense representations, exemplified by ColBERT. In sparse retrieval, more recent work, such as SPLADE, demonstrated that one can also learn sparse lexical representations to achieve comparable effectiveness while enjoying better interpretability. In this work, we combine the strengths of both the sparse and dense representations for first-stage retrieval. Specifically, we propose SparseEmbed - a novel retrieval model that learns sparse lexical representations with contextual embeddings. Compared with SPLADE, our model leverages the contextual embeddings to improve model expressiveness. Compared with ColBERT, our sparse representations are trained end-to-end to optimize both efficiency and effectiveness.

Topics & Concepts

InterpretabilityComputer scienceArtificial intelligenceSparse approximationNatural language processingMachine learningTopic ModelingDomain Adaptation and Few-Shot LearningMultimodal Machine Learning Applications
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