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Prompt-based Conservation Learning for Multi-hop Question Answering (2209.06923v1)

Published 14 Sep 2022 in cs.CL

Abstract: Multi-hop question answering (QA) requires reasoning over multiple documents to answer a complex question and provide interpretable supporting evidence. However, providing supporting evidence is not enough to demonstrate that a model has performed the desired reasoning to reach the correct answer. Most existing multi-hop QA methods fail to answer a large fraction of sub-questions, even if their parent questions are answered correctly. In this paper, we propose the Prompt-based Conservation Learning (PCL) framework for multi-hop QA, which acquires new knowledge from multi-hop QA tasks while conserving old knowledge learned on single-hop QA tasks, mitigating forgetting. Specifically, we first train a model on existing single-hop QA tasks, and then freeze this model and expand it by allocating additional sub-networks for the multi-hop QA task. Moreover, to condition pre-trained LLMs to stimulate the kind of reasoning required for specific multi-hop questions, we learn soft prompts for the novel sub-networks to perform type-specific reasoning. Experimental results on the HotpotQA benchmark show that PCL is competitive for multi-hop QA and retains good performance on the corresponding single-hop sub-questions, demonstrating the efficacy of PCL in mitigating knowledge loss by forgetting.

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Authors (6)
  1. Zhenyun Deng (7 papers)
  2. Yonghua Zhu (4 papers)
  3. Yang Chen (535 papers)
  4. Qianqian Qi (6 papers)
  5. Michael Witbrock (48 papers)
  6. Patricia Riddle (7 papers)
Citations (4)