Mitigating hallucination issues is a key challenge that must be overcome to reliably deploy large language models (LLMs) in real-world scenarios. Recently, various methods have been proposed to detect and revise factual errors in LLM-generated texts, in order to reduce hallucination. In this paper, we propose Re-Ex, a method for post-editing LLM-generated responses. Re-Ex introduces a novel reasoning step dubbed as the factual error explanation step. Re-Ex revises the initial response of LLMs using 3-steps : first, external tools are used to retrieve the evidences of the factual errors in the initial LLM response; next, LLM is instructed to explain the problematic parts of the response based on the gathered evidence; finally, LLM revises the initial response using the explanations provided in the previous step. In addition to the explanation step, Re-Ex also incorporates new prompting techniques to reduce the token count and inference time required for the response revision process. Compared with existing methods including FacTool, CoVE, and RARR, Re-Ex provides better detection and revision performance with less inference time and fewer tokens in multiple benchmarks.
Re-Ex: Revising after Explanation Reduces the Factual Errors in LLM Responses
Re-Ex is a post-editing method for LLMs that reduces hallucination by introducing a factual error explanation step and using prompting techniques to minimize token count and inference time.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2402.17097v2ARXIV-DEFAULT
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