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