Using Balancing Terms to Avoid Discrimination in Classification

Simon Enni, I. Assent
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引用次数: 2

Abstract

From personalized ad delivery and healthcare to criminal sentencing, more decisions are made with help from methods developed in the fields of data mining and machine learning than ever before. However, their widespread use has raised concerns about the discriminatory impact which the methods may have on people subject to these decisions. Recently, imbalance in the misclassification rates between groups has been identified as a source of discrimination. Such discrimination is not handled by most existing work in discrimination-aware data mining, and it can persist even if other types of discrimination are alleviated. In this article, we present the Balancing Terms (BT) method to address this problem. BT balances the error rates of any classifier with a differentiable prediction function, and unlike existing work, it can incorporate a preference for the trade-off between fairness and accuracy. We empirically evaluate BT on real-world data, demonstrating that our method produces tradeoffs between error rate balance and total classification error that are superior and in only few cases comparable to the state-of-the-art.
利用平衡项避免分类中的歧视
从个性化广告投放和医疗保健到刑事判决,在数据挖掘和机器学习领域开发的方法的帮助下,做出的决策比以往任何时候都多。然而,它们的广泛使用引起了人们的关注,即这些方法可能对受这些决定约束的人产生歧视性影响。最近,在群体之间的错误分类率的不平衡已被确定为歧视的来源。在感知歧视的数据挖掘中,大多数现有的工作都没有处理这种歧视,即使其他类型的歧视得到缓解,这种歧视也会持续存在。在本文中,我们提出平衡项(BT)方法来解决这个问题。BT用一个可微的预测函数来平衡任何分类器的错误率,与现有的工作不同,它可以在公平性和准确性之间权衡。我们在真实世界的数据上对BT进行了经验评估,证明我们的方法在错误率平衡和总分类错误之间产生了折衷,并且在少数情况下可以与最先进的技术相媲美。
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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