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Passage-specific Prompt Tuning for Passage Reranking in Question Answering with Large Language Models (2405.20654v2)

Published 31 May 2024 in cs.CL and cs.IR

Abstract: Effective passage retrieval and reranking methods have been widely utilized to identify suitable candidates in open-domain question answering tasks, recent studies have resorted to LLMs for reranking the retrieved passages by the log-likelihood of the question conditioned on each passage. Although these methods have demonstrated promising results, the performance is notably sensitive to the human-written prompt (or hard prompt), and fine-tuning LLMs can be computationally intensive and time-consuming. Furthermore, this approach limits the leverage of question-passage relevance pairs and passage-specific knowledge to enhance the ranking capabilities of LLMs. In this paper, we propose passage-specific prompt tuning for reranking in open-domain question answering (PSPT): a parameter-efficient method that fine-tunes learnable passage-specific soft prompts, incorporating passage-specific knowledge from a limited set of question-passage relevance pairs. The method involves ranking retrieved passages based on the log-likelihood of the model generating the question conditioned on each passage and the learned soft prompt. We conducted extensive experiments utilizing the Llama-2-chat-7B model across three publicly available open-domain question answering datasets and the results demonstrate the effectiveness of the proposed approach.

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Authors (5)
  1. Xuyang Wu (31 papers)
  2. Zhiyuan Peng (33 papers)
  3. Hsin-Tai Wu (12 papers)
  4. Yi Fang (151 papers)
  5. Krishna Sravanthi Rajanala Sai (1 paper)
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