PPFL

IF 0.7 Q4 TELECOMMUNICATIONS GetMobile-Mobile Computing & Communications Review Pub Date : 2022-03-30 DOI:10.1145/3529706.3529715
Fan Mo, H. Haddadi, Kleomenis Katevas, Eduard Marin, Diego Perino, N. Kourtellis
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引用次数: 6

Abstract

Mobile networks and devices provide the users with ubiquitous connectivity, while many of their functionality and business models rely on data analysis and processing. In this context, Machine Learning (ML) plays a key role and has been successfully leveraged by the different actors in the mobile ecosystem (e.g., application and Operating System developers, vendors, network operators, etc.). Traditional ML designs assume (user) data are collected and models are trained in a centralized location. However, this approach has privacy consequences related to data collection and processing. Such concerns have incentivized the scientific community to design and develop Privacy-preserving ML methods, including techniques like Federated Learning (FL) where the ML model is trained or personalized on user devices close to the data; Differential Privacy, where data are manipulated to limit the disclosure of private information; Trusted Execution Environments (TEE), where most of the computation is run under a secure/ private environment; and Multi-Party Computation, a cryptographic technique that allows various parties to run joint computations without revealing their private data to each other.
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移动网络和设备为用户提供无处不在的连接,而它们的许多功能和商业模式依赖于数据分析和处理。在这种情况下,机器学习(ML)发挥着关键作用,并已成功地利用移动生态系统中的不同参与者(例如,应用程序和操作系统开发人员,供应商,网络运营商等)。传统的机器学习设计假设(用户)数据是收集的,模型是在一个集中的位置训练的。然而,这种方法具有与数据收集和处理相关的隐私后果。这种担忧激励了科学界设计和开发保护隐私的机器学习方法,包括联邦学习(FL)等技术,其中机器学习模型在接近数据的用户设备上进行训练或个性化;差别隐私,数据被操纵以限制私人信息的披露;可信执行环境(TEE),其中大多数计算在安全/私有环境下运行;以及多方计算(Multi-Party Computation),这是一种加密技术,允许各方在不向彼此泄露私人数据的情况下进行联合计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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