时空联邦学习应用公平性分析的审计框架

A. Mashhadi, Ali Tabaraei, Yuting Zhan, R. Parizi
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引用次数: 1

摘要

联邦学习使智能手机等远程设备能够训练统计模型,同时确保数据的私密性和安全性。执行保护隐私的数据分析变得越来越重要,因为我们的模型可能在异构和大规模网络中进行训练。虽然联邦学习有可能通过设备上的学习来提高许多现有模型的多样性,并允许更广泛的用户参与,但开发公平的联邦学习模型是一项具有挑战性的任务。在本文中,我们提出了一个基于时空数据的FL模型公平性审计系统。借用流动性文献的原则,我们提出了一套使用时空数据来定义个人公平性的指标。我们还介绍了一组用于在分布式设置中测量这些指标的方法,以及构建一个可以动态监控FL模型公平性的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Auditing Framework for Analyzing Fairness of Spatial-Temporal Federated Learning Applications
Federated learning enables remote devices such as smartphones to train statistical models while ensuring that data remains private and secure. Performing privacy-preserving data analysis becomes increasingly crucial as our model is potentially being trained within heterogeneous and massive networks. While federated learning offers the potential to boost diversity in many existing models through on-device learning and enabling a wider range of users to participate, developing fair federated learning models is a challenging task. Throughout this paper, we propose a fairness auditing system for FL models that rely on spatial-temporal data. Borrowing tenets from mobility literature, we propose a set of metrics to define individual fairness using spatial-temporal data. We also introduce a set of approaches for measuring these metrics in distributed settings, as well as building a framework that can monitor the fairness of FL models dynamically.
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