Reducing Unintended Bias of ML Models on Tabular and Textual Data

Guilherme Alves, M. Amblard, Fabien Bernier, Miguel Couceiro, A. Napoli
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引用次数: 10

Abstract

Unintended biases in machine learning (ML) models are among the major concerns that must be addressed to maintain public trust in ML. In this paper, we address process fairness of ML models that consists in reducing the dependence of models on sensitive features, without compromising their performance. We revisit the framework FixOut that is inspired in the approach “fairness through unawareness” to build fairer models. We introduce several improvements such as automating the choice of FixOut's parameters. Also, FixOut was originally proposed to improve fairness of ML models on tabular data. We also demonstrate the feasibility of FixOut's workflow for models on textual data. We present several experimental results that illustrate the fact that FixOut improves process fairness on different classification settings.
减少机器学习模型在表格和文本数据上的意外偏差
机器学习(ML)模型中的意外偏差是必须解决的主要问题之一,以保持公众对ML的信任。在本文中,我们解决了ML模型的过程公平性,包括减少模型对敏感特征的依赖,而不影响其性能。我们重新审视FixOut框架,该框架受到“通过无意识实现公平”方法的启发,以建立更公平的模型。我们介绍了一些改进,如FixOut参数的自动化选择。此外,FixOut最初是为了提高ML模型在表格数据上的公平性而提出的。我们还演示了FixOut的工作流在文本数据模型上的可行性。我们给出了几个实验结果,说明FixOut在不同的分类设置下提高了过程公平性。
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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