Reason from Fallacy: Enhancing Large Language Models' Logical Reasoning through Logical Fallacy Understanding
- URL: http://arxiv.org/abs/2404.04293v1
- Date: Thu, 4 Apr 2024 08:38:03 GMT
- Title: Reason from Fallacy: Enhancing Large Language Models' Logical Reasoning through Logical Fallacy Understanding
- Authors: Yanda Li, Dixuan Wang, Jiaqing Liang, Guochao Jiang, Qianyu He, Yanghua Xiao, Deqing Yang,
- Abstract summary: Large Language Models (LLMs) have demonstrated good performance in many reasoning tasks.
But they still struggle with some complicated reasoning tasks including logical reasoning.
We propose five concrete tasks from three cognitive dimensions of WHAT, WHY, and HOW in this paper.
- Score: 40.2816930342597
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large Language Models (LLMs) have demonstrated good performance in many reasoning tasks, but they still struggle with some complicated reasoning tasks including logical reasoning. One non-negligible reason for LLMs' suboptimal performance on logical reasoning is their overlooking of understanding logical fallacies correctly. To evaluate LLMs' capability of logical fallacy understanding (LFU), we propose five concrete tasks from three cognitive dimensions of WHAT, WHY, and HOW in this paper. Towards these LFU tasks, we have successfully constructed a new dataset LFUD based on GPT-4 accompanied by a little human effort. Our extensive experiments justify that our LFUD can be used not only to evaluate LLMs' LFU capability, but also to fine-tune LLMs to obtain significantly enhanced performance on logical reasoning.
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