计算机科学
分类器(UML)
人口统计学的
公平性度量
人口
任务(项目管理)
人工智能
电信
社会学
人口学
吞吐量
经济
管理
无线
作者
Cynthia Dwork,Moritz Hardt,Toniann Pitassi,Omer Reingold,Richard S. Zemel
标识
DOI:10.1145/2090236.2090255
摘要
We study fairness in classification, where individuals are classified, e.g., admitted to a university, and the goal is to prevent discrimination against individuals based on their membership in some group, while maintaining utility for the classifier (the university). The main conceptual contribution of this paper is a framework for fair classification comprising (1) a (hypothetical) task-specific metric for determining the degree to which individuals are similar with respect to the classification task at hand; (2) an algorithm for maximizing utility subject to the fairness constraint, that similar individuals are treated similarly. We also present an adaptation of our approach to achieve the complementary goal of "fair affirmative action," which guarantees statistical parity (i.e., the demographics of the set of individuals receiving any classification are the same as the demographics of the underlying population), while treating similar individuals as similarly as possible. Finally, we discuss the relationship of fairness to privacy: when fairness implies privacy, and how tools developed in the context of differential privacy may be applied to fairness.
科研通智能强力驱动
Strongly Powered by AbleSci AI