Using Explainability for Bias Mitigation: A Case Study for Fair Recruitment Assessment

Gizem Sogancioglu, Heysem Kaya, Albert Ali Salah
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Abstract

In this study, we propose a bias-mitigation algorithm, dubbed ProxyMute, that uses an explainability method to detect proxy features of a given sensitive attribute (e.g., gender) and reduces their effects on decisions by disabling them during prediction time. We evaluate our method for a job recruitment use-case, on two different multimodal datasets, namely, FairCVdb and ChaLearn LAP-FI. The exhaustive set of experiments shows that information regarding the proxy features that are provided by explainability methods is beneficial and can be successfully used for the problem of bias mitigation. Furthermore, when combined with a target label normalization method, the proposed approach shows a good performance by yielding one of the fairest results without deteriorating the performance significantly compared to previous works on both experimental datasets. The scripts to reproduce the results are available at: https://github.com/gizemsogancioglu/expl-bias-mitigation.
利用可解释性减轻偏见:公平招聘评估的案例研究
在这项研究中,我们提出了一种偏见缓解算法,称为ProxyMute,它使用可解释性方法来检测给定敏感属性(例如,性别)的代理特征,并通过在预测期间禁用它们来减少它们对决策的影响。我们在两个不同的多模态数据集(即FairCVdb和ChaLearn LAP-FI)上评估了我们的招聘用例方法。详尽的一组实验表明,可解释性方法提供的关于代理特征的信息是有益的,可以成功地用于减轻偏差的问题。此外,当与目标标签归一化方法相结合时,与之前在两个实验数据集上的工作相比,所提出的方法显示出良好的性能,产生了最公平的结果之一,而不会显着降低性能。复制结果的脚本可在:https://github.com/gizemsogancioglu/expl-bias-mitigation获得。
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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