论文标题

联合人拥挤:框架和挑战

Federated Crowdsensing: Framework and Challenges

论文作者

Wang, Leye, Yu, Han, Han, Xiao

论文摘要

众包是智能城市应用程序(例如,流量和环境监视)的有希望的感知范式,智能移动设备和高级网络基础架构的流行率。同时,由于个人执行任务,隐私保护是人群系统中的关键问题之一。传统上,为了减轻用户的隐私问题,通过诸如差异隐私之类的技术添加了参与者的敏感数据(例如参与者位置)的噪声。但是,这不可避免地会导致众包任务的质量损失。最近,已经提出了联邦学习范式,该范式旨在在机器学习中获得隐私保护,同时确保学习质量几乎没有损失或没有损失。受联邦学习范式的启发,本文研究了联邦学习如何使人群的应用受益。特别是,我们首先提出了一个联合的人群框架,该框架分析了每个人群阶段(即任务创建,任务分配,任务执行和数据汇总)的隐私问题,并讨论了联合学习技术如何生效。最后,我们总结了联邦众包的主要挑战和机遇。

Crowdsensing is a promising sensing paradigm for smart city applications (e.g., traffic and environment monitoring) with the prevalence of smart mobile devices and advanced network infrastructure. Meanwhile, as tasks are performed by individuals, privacy protection is one of the key issues in crowdsensing systems. Traditionally, to alleviate users' privacy concerns, noises are added to participants' sensitive data (e.g., participants' locations) through techniques such as differential privacy. However, this inevitably results in quality loss to the crowdsensing task. Recently, federated learning paradigm has been proposed, which aims to achieve privacy preservation in machine learning while ensuring that the learning quality suffers little or no loss. Inspired by the federated learning paradigm, this article studies how federated learning may benefit crowdsensing applications. In particular, we first propose a federated crowdsensing framework, which analyzes the privacy concerns of each crowdsensing stage (i.e., task creation, task assignment, task execution, and data aggregation) and discuss how federated learning techniques may take effect. Finally, we summarize key challenges and opportunities in federated crowdsensing.

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