缺少保护属性的公平迁移学习

Amanda Coston, K. Ramamurthy, Dennis Wei, Kush R. Varshney, S. Speakman, Zairah Mustahsan, Supriyo Chakraborty
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引用次数: 86

摘要

风险评估是机器学习模型越来越多的用途。当用于高风险应用程序时,特别是那些受反歧视法或社会公平规范约束的应用程序,确保学习模型不会传播和扩展训练数据中可能存在的任何偏见是很重要的。在本文中,我们增加了一个超越公平性的额外挑战:对源分布和目标分布之间协变量移位的无监督域自适应。在美国健康保险新市场和东非移动货币贷款的现实世界风险评估问题的激励下,我们提供了具有协变量移位和分数平价问题的机器学习的精确公式。我们的表述侧重于受保护的属性在源域或目标域中都不可用的情况。我们提出了两种新的加权方法:不需要目标域保护属性的流行约束协变量移位(PCCS)和不需要源域保护属性的目标公平协变量移位(TFCS)。我们在两个应用中实证证明了它们的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fair Transfer Learning with Missing Protected Attributes
Risk assessment is a growing use for machine learning models. When used in high-stakes applications, especially ones regulated by anti-discrimination laws or governed by societal norms for fairness, it is important to ensure that learned models do not propagate and scale any biases that may exist in training data. In this paper, we add on an additional challenge beyond fairness: unsupervised domain adaptation to covariate shift between a source and target distribution. Motivated by the real-world problem of risk assessment in new markets for health insurance in the United States and mobile money-based loans in East Africa, we provide a precise formulation of the machine learning with covariate shift and score parity problem. Our formulation focuses on situations in which protected attributes are not available in either the source or target domain. We propose two new weighting methods: prevalence-constrained covariate shift (PCCS) which does not require protected attributes in the target domain and target-fair covariate shift (TFCS) which does not require protected attributes in the source domain. We empirically demonstrate their efficacy in two applications.
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