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arxiv:2502.10639

LSTM-based Selective Dense Text Retrieval Guided by Sparse Lexical Retrieval

Published on Feb 15
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Abstract

A cluster-based selective dense retrieval method called CluSD, guided by sparse lexical retrieval, improves search efficiency by leveraging embedding clusters and LSTM models, outperforming baselines on MS MARCO and BEIR datasets.

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This paper studies fast fusion of dense retrieval and sparse lexical retrieval, and proposes a cluster-based selective dense retrieval method called CluSD guided by sparse lexical retrieval. CluSD takes a lightweight cluster-based approach and exploits the overlap of sparse retrieval results and embedding clusters in a two-stage selection process with an LSTM model to quickly identify relevant clusters while incurring limited extra memory space overhead. CluSD triggers partial dense retrieval and performs cluster-based block disk I/O if needed. This paper evaluates CluSD and compares it with several baselines for searching in-memory and on-disk MS MARCO and BEIR datasets.

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