A New Framework to Assess the Individual Fairness of Probabilistic Classifiers

M. F. A. Khan, Hamid Karimi
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Abstract

Fairness in machine learning has become a global concern due to the predominance of ML in automated decision-making systems. In comparison to group fairness, individual fairness, which aspires that similar individuals should be treated similarly, has received limited attention due to some challenges. One major challenge is the availability of a proper metric to evaluate individual fairness, especially for probabilistic classifiers. In this study, we propose a framework PCIndFair to assess the individual fairness of probabilistic classifiers. Unlike current individual fairness measures, our framework considers probability distribution rather than the final classification outcome, which is suitable for capturing the dynamic of probabilistic classifiers, e.g., neural networks. We perform extensive experiments on four standard datasets and discuss the practical benefits of the framework. This study can be helpful for machine learning researchers and practitioners flexibly assess their models' individual fairness. The complete code of the framework is publicly available1.
一种评估概率分类器个体公平性的新框架
由于机器学习在自动化决策系统中的主导地位,机器学习中的公平性已经成为全球关注的问题。与群体公平相比,个体公平由于受到一些挑战而受到的关注有限。个体公平要求相似的个体应该得到相似的对待。一个主要的挑战是评估个体公平性的适当度量的可用性,特别是对于概率分类器。在本研究中,我们提出了一个框架PCIndFair来评估概率分类器的个体公平性。与当前的个体公平度量不同,我们的框架考虑概率分布而不是最终分类结果,这适用于捕获概率分类器(例如神经网络)的动态。我们在四个标准数据集上进行了广泛的实验,并讨论了该框架的实际好处。本研究可以帮助机器学习研究者和实践者灵活地评估其模型的个体公平性。该框架的完整代码是公开的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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