cs.AI updates on arXiv.org 09月18日
Mirror-Consistency:提升LLM推理能力的新策略
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本文提出Mirror-Consistency,一种增强型Self-Consistency解码策略,通过引入‘反思镜’机制,使LLM能够更全面地审视生成过程中的不一致性,并提升推理准确性和置信度。

arXiv:2410.10857v2 Announce Type: replace-cross Abstract: Self-Consistency, a widely-used decoding strategy, significantly boosts the reasoning capabilities of Large Language Models (LLMs). However, it depends on the plurality voting rule, which focuses on the most frequent answer while overlooking all other minority responses. These inconsistent minority views often illuminate areas of uncertainty within the model's generation process. To address this limitation, we present Mirror-Consistency, an enhancement of the standard Self-Consistency approach. Our method incorporates a 'reflective mirror' into the self-ensemble decoding process and enables LLMs to critically examine inconsistencies among multiple generations. Additionally, just as humans use the mirror to better understand themselves, we propose using Mirror-Consistency to enhance the sample-based confidence calibration methods, which helps to mitigate issues of overconfidence. Our experimental results demonstrate that Mirror-Consistency yields superior performance in both reasoning accuracy and confidence calibration compared to Self-Consistency.

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Mirror-Consistency LLM 推理能力 解码策略 置信度
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