cs.AI updates on arXiv.org 10月22日 12:20
LLM评分偏见与改进研究
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本文探讨了大型语言模型在评分评价中的可靠性问题,揭示了评分范围偏见及其对模型性能的影响,并提出通过对比解码方法有效缓解这一偏见,提高了评分与人类判断的相关性。

arXiv:2510.18196v1 Announce Type: cross Abstract: Large Language Models (LLMs) are commonly used as evaluators in various applications, but the reliability of the outcomes remains a challenge. One such challenge is using LLMs-as-judges for direct assessment, i.e., assigning scores from a specified range without any references. We first show that this challenge stems from LLM judge outputs being associated with score range bias, i.e., LLM judge outputs are highly sensitive to pre-defined score ranges, preventing the search for optimal score ranges. We also show that similar biases exist among models from the same family. We then mitigate this bias through contrastive decoding, achieving up to 11.3% relative improvement on average in Spearman correlation with human judgments across different score ranges.

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大型语言模型 评分评价 评分偏见 对比解码 相关性
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