cs.AI updates on arXiv.org 07月28日 12:42
Can Small-Scale Data Poisoning Exacerbate Dialect-Linked Biases in Large Language Models?
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研究指出大型语言模型在处理非洲裔美国英语与标准英语输入时,对数据中毒的敏感性存在差异,并强调了方言意识评价和去偏见干预的重要性。

arXiv:2507.19195v1 Announce Type: cross Abstract: Despite the ongoing improvements in the design of large language models (LLMs) to foster inclusion and balanced responses, these systems remain susceptible to encoding and amplifying social biases. This study examines how dialectal variation, specifically African American Vernacular English (AAVE) versus Standard American English (SAE), interacts with data poisoning to influence toxicity in outputs. Using both small- and medium-scale LLaMA models, we show that even minimal exposure to poisoned data significantly increases toxicity for AAVE inputs, while it remains comparatively unaffected for SAE. Larger models exhibit a more significant amplification effect which suggests heightened susceptibility with scale. To further assess these disparities, we employed GPT-4o as a fairness auditor, which identified harmful stereotypical patterns disproportionately tied to AAVE inputs, including portrayals of aggression, criminality, and intellectual inferiority. These findings underscore the compounding impact of data poisoning and dialectal bias and emphasize the need for dialect-aware evaluation, targeted debiasing interventions, and socially responsible training protocols during development.

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大型语言模型 社会偏见 方言差异 数据中毒 去偏见
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