Dense Passage Retrieval in Conversational Search
Dense Passage Retrieval in Conversational Search
Information retrieval systems have traditionally relied on exact term match methods such as BM25 for first-stage retrieval. However, recent advancements in neural network-based techniques have introduced a new method called dense retrieval. This approach uses a dual-encoder to create contextual embeddings that can be indexed and clustered efficiently at run-time, resulting in improved retrieval performance in Open-domain Question Answering systems. In this paper, we apply the dense retrieval technique to conversational search by conducting experiments on the CAsT benchmark dataset. We also propose an end-to-end conversational search system called GPT2QR+DPR, which incorporates various query reformulation strategies to improve retrieval accuracy. Our findings indicate that dense retrieval outperforms BM25 even without extensive fine-tuning. Our work contributes to the growing body of research on neural-based retrieval methods in conversational search, and highlights the potential of dense retrieval in improving retrieval accuracy in conversational search systems.
Ahmed H. Salamah、Pierre McWhannel、Nicole Yan
计算技术、计算机技术
Ahmed H. Salamah,Pierre McWhannel,Nicole Yan.Dense Passage Retrieval in Conversational Search[EB/OL].(2025-03-21)[2025-05-11].https://arxiv.org/abs/2503.17507.点此复制
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