Uldp-FL: Federated Learning with Across-Silo User-Level Differential Privacy.

IF 2.6 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Fumiyuki Kato, Li Xiong, Shun Takagi, Yang Cao, Masatoshi Yoshikawa
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引用次数: 0

Abstract

Differentially Private Federated Learning (DP-FL) has garnered attention as a collaborative machine learning approach that ensures formal privacy. Most DP-FL approaches ensure DP at the record-level within each silo for cross-silo FL. However, a single user's data may extend across multiple silos, and the desired user-level DP guarantee for such a setting remains unknown. In this study, we present Uldp-FL, a novel FL framework designed to guarantee user-level DP in cross-silo FL where a single user's data may belong to multiple silos. Our proposed algorithm directly ensures user-level DP through per-user weighted clipping, departing from group-privacy approaches. We provide a theoretical analysis of the algorithm's privacy and utility. Additionally, we improve the utility of the proposed algorithm with an enhanced weighting strategy based on user record distribution and design a novel private protocol that ensures no additional information is revealed to the silos and the server. Experiments on real-world datasets show substantial improvements in our methods in privacy-utility trade-offs under user-level DP compared to baseline methods. To the best of our knowledge, our work is the first FL framework that effectively provides user-level DP in the general cross-silo FL setting.

Uldp-FL:跨竖井用户级差分隐私的联邦学习。
差分私有联邦学习(DP-FL)作为一种确保正式隐私的协作机器学习方法引起了人们的关注。大多数DP-FL方法确保跨筒仓FL在每个筒仓内的记录级DP。然而,单个用户的数据可能跨多个筒仓扩展,并且这种设置所需的用户级DP保证仍然未知。在本研究中,我们提出了Uldp-FL,这是一种新颖的FL框架,旨在保证单个用户的数据可能属于多个筒仓的跨筒仓FL中的用户级DP。我们提出的算法通过每个用户加权裁剪直接确保用户级DP,而不是群体隐私方法。对该算法的保密性和实用性进行了理论分析。此外,我们通过基于用户记录分布的增强加权策略提高了所提出算法的实用性,并设计了一种新的私有协议,确保不会向筒仓和服务器透露额外的信息。在真实世界数据集上的实验表明,与基线方法相比,我们的方法在用户级DP下的隐私效用权衡方面有了实质性的改进。据我们所知,我们的工作是第一个在一般跨竖井FL设置中有效提供用户级DP的FL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。
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来源期刊
Proceedings of the Vldb Endowment
Proceedings of the Vldb Endowment Computer Science-General Computer Science
CiteScore
7.70
自引率
0.00%
发文量
95
期刊介绍: The Proceedings of the VLDB (PVLDB) welcomes original research papers on a broad range of research topics related to all aspects of data management, where systems issues play a significant role, such as data management system technology and information management infrastructures, including their very large scale of experimentation, novel architectures, and demanding applications as well as their underpinning theory. The scope of a submission for PVLDB is also described by the subject areas given below. Moreover, the scope of PVLDB is restricted to scientific areas that are covered by the combined expertise on the submission’s topic of the journal’s editorial board. Finally, the submission’s contributions should build on work already published in data management outlets, e.g., PVLDB, VLDBJ, ACM SIGMOD, IEEE ICDE, EDBT, ACM TODS, IEEE TKDE, and go beyond a syntactic citation.
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