cs.AI updates on arXiv.org 10月14日 12:21
LLMs在仇恨言论检测中的脆弱性研究
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本文探讨了大型语言模型(LLMs)在仇恨言论检测中的脆弱性,特别是当输入中包含说话者的种族身份标记时。研究发现,模型在处理隐含方言特征时表现更脆弱,且不同种族间的翻转百分比存在差异,提示需谨慎部署LLMs进行高风险任务。

arXiv:2410.20490v2 Announce Type: replace-cross Abstract: Large Language Models (LLMs) offer a lucrative promise for scalable content moderation, including hate speech detection. However, they are also known to be brittle and biased against marginalised communities and dialects. This requires their applications to high-stakes tasks like hate speech detection to be critically scrutinized. In this work, we investigate the robustness of hate speech classification using LLMs particularly when explicit and implicit markers of the speaker's ethnicity are injected into the input. For explicit markers, we inject a phrase that mentions the speaker's linguistic identity. For the implicit markers, we inject dialectal features. By analysing how frequently model outputs flip in the presence of these markers, we reveal varying degrees of brittleness across 3 LLMs and 1 LM and 5 linguistic identities. We find that the presence of implicit dialect markers in inputs causes model outputs to flip more than the presence of explicit markers. Further, the percentage of flips varies across ethnicities. Finally, we find that larger models are more robust. Our findings indicate the need for exercising caution in deploying LLMs for high-stakes tasks like hate speech detection.

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大型语言模型 仇恨言论检测 脆弱性 种族偏见 方言特征
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