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Argumentative Debates for Transparent Bias Detection [Technical Report]
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本文提出一种基于个体及其邻域保护特征值的新方法,用于检测AI算法中的偏差,强调透明度、可解释性和可说明性,并通过形式和计算论证技术进行评估。

arXiv:2508.04511v1 Announce Type: new Abstract: As the use of AI systems in society grows, addressing potential biases that emerge from data or are learned by models is essential to prevent systematic disadvantages against specific groups. Several notions of (un)fairness have been proposed in the literature, alongside corresponding algorithmic methods for detecting and mitigating unfairness, but, with very few exceptions, these tend to ignore transparency. Instead, interpretability and explainability are core requirements for algorithmic fairness, even more so than for other algorithmic solutions, given the human-oriented nature of fairness. In this paper, we contribute a novel interpretable, explainable method for bias detection relying on debates about the presence of bias against individuals, based on the values of protected features for the individuals and others in their neighbourhoods. Our method builds upon techniques from formal and computational argumentation, whereby debates result from arguing about biases within and across neighbourhoods. We provide formal, quantitative, and qualitative evaluations of our method, highlighting its strengths in performance against baselines, as well as its interpretability and explainability.

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AI算法公平性 偏差检测 可解释性 算法评估
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