cs.AI updates on arXiv.org 10月13日
LLM多语言测试与GPT-5性能评估
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本文通过对比测试LLM在不同语言环境下的表现,评估GPT-5等模型的准确性及一致性,并指出LLM在不同类别上的性能差异,强调测试和改进的必要性。

arXiv:2510.08776v1 Announce Type: cross Abstract: With LLM usage becoming widespread across countries, languages, and humanity more broadly, the need to understand and guardrail their multilingual responses increases. Large-scale datasets for testing and benchmarking have been created to evaluate and facilitate LLM responses across multiple dimensions. In this study, we evaluate the responses of frontier and leading open-source models in five dimensions across low and high-resource languages to measure LLM accuracy and consistency across multilingual contexts. We evaluate the responses using a five-point grading rubric and a judge LLM. Our study shows that GPT-5 performed the best on average in each category, while other models displayed more inconsistency across language and category. Most notably, in the Consent & Autonomy and Harm Prevention & Safety categories, GPT scored the highest with averages of 3.56 and 4.73, while Gemini 2.5 Pro scored the lowest with averages of 1.39 and 1.98, respectively. These findings emphasize the need for further testing on how linguistic shifts impact LLM responses across various categories and improvement in these areas.

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LLM GPT-5 多语言测试 模型评估 性能分析
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