计算机科学
借记
下游(制造业)
特征学习
代表(政治)
任务(项目管理)
集合(抽象数据类型)
光学(聚焦)
机器学习
理论计算机科学
人工智能
经济
法学
程序设计语言
认知科学
管理
心理学
物理
光学
政治
运营管理
政治学
作者
Yue Cui,Chen Ma,Kai Zheng,Lei Chen,Xiaofang Zhou
标识
DOI:10.1145/3543507.3583307
摘要
Learning fair and transferable representations of users that can be used for a wide spectrum of downstream tasks (specifically, machine learning models) has great potential in fairness-aware Web services. Existing studies focus on debiasing w.r.t. a small scale of (one or a handful of) fixed pre-defined sensitive attributes. However, in real practice, downstream data users can be interested in various protected groups and these are usually not known as prior. This requires the learned representations to be fair w.r.t. all possible sensitive attributes. We name this task universal fair representation learning, in which an exponential number of sensitive attributes need to be dealt with, bringing the challenges of unreasonable computational cost and un-guaranteed fairness constraints. To address these problems, we propose a controllable universal fair representation learning (CUFRL) method. An effective bound is first derived via the lens of mutual information to guarantee parity of the universal set of sensitive attributes while maintaining the accuracy of downstream tasks. We also theoretically establish that the number of sensitive attributes that need to be processed can be reduced from exponential to linear. Experiments on two public real-world datasets demonstrate CUFRL can achieve significantly better accuracy-fairness trade-off compared with baseline approaches.
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