具有公平性约束的分类:一个具有可证明保证的元算法

L. E. Celis, Lingxiao Huang, Vijay Keswani, Nisheeth K. Vishnoi
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引用次数: 255

摘要

由于分类算法在社会环境中的部署增加,开发对数据敏感属性公平的分类算法是一个重要问题。最近的一些工作集中在研究与特定公平指标相关的分类,将相应的公平分类问题建模为约束优化问题,并开发定制算法来解决这些问题。尽管如此,仍然有一些重要的指标没有理论保证的公平分类器;主要是因为所得到的优化问题是非凸的。本文的主要贡献是一种用于分类的元算法,该算法可以将关于多个不相交和多值敏感属性的一般公平性约束作为输入,并且具有可证明的保证。特别是,我们的算法可以处理非凸的“线性分数”约束(包括公平性约束,如预测奇偶性),而之前的算法是未知的。我们的研究结果的关键是一种针对一类具有凸约束的分类问题的算法,以及对一类具有线性分数约束的分类问题的简化。根据经验,我们观察到我们的算法速度很快,可以在各种公平指标上实现近乎完美的公平,并且由于强加的公平约束而导致的准确性损失通常很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification with Fairness Constraints: A Meta-Algorithm with Provable Guarantees
Developing classification algorithms that are fair with respect to sensitive attributes of the data is an important problem due to the increased deployment of classification algorithms in societal contexts. Several recent works have focused on studying classification with respect to specific fairness metrics, modeled the corresponding fair classification problem as constrained optimization problems, and developed tailored algorithms to solve them. Despite this, there still remain important metrics for which there are no fair classifiers with theoretical guarantees; primarily because the resulting optimization problem is non-convex. The main contribution of this paper is a meta-algorithm for classification that can take as input a general class of fairness constraints with respect to multiple non-disjoint and multi-valued sensitive attributes, and which comes with provable guarantees. In particular, our algorithm can handle non-convex "linear fractional" constraints (which includes fairness constraints such as predictive parity) for which no prior algorithm was known. Key to our results is an algorithm for a family of classification problems with convex constraints along with a reduction from classification problems with linear fractional constraints to this family. Empirically, we observe that our algorithm is fast, can achieve near-perfect fairness with respect to various fairness metrics, and the loss in accuracy due to the imposed fairness constraints is often small.
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