联合学习与强化学习:客户端的自适应隐私保护

IF 3.8 2区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Kun Gao , Tianqing Zhu , Dayong Ye , Longxiang Gao , Wanlei Zhou
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引用次数: 0

摘要

随着对联邦学习中数据隐私问题的日益关注,联邦学习已成为满足日益增长的隐私遵从性需求的重要解决方案。然而,取消学习可能会带来新的安全问题,例如对抗性操作的危险,攻击者可能会发起恶意更新或输入来损害模型的性能或预测,隐私攻击,因为敏感数据可能会从取消学习的过程中推断出来,以及性能下降,因为取消学习过程可能会破坏模型的一致性或性能。为了解决这些问题,在不给联邦系统带来太多负面影响的情况下,获得良好的自适应遗忘策略,本文提出了一种基于强化学习的方法来促进联邦学习中的数据遗忘方法。我们的方法使用DQN结合客户的属性(如贡献、隐私成本和计算开销),通过部分取消学习、完全取消学习或不取消学习来迭代地处理客户端。我们表明,通过使用强化学习技术,可以有效地防御性能衰减,并且对抗行为确实是联合学习场景中常见的问题。我们的分析可以为防止性能和安全威胁的联合学习框架的开发提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Unlearning With Reinforcement Learning: Adaptive Privacy Preservation for Clients
With growing attention to data privacy in federated learning, federated unlearning has become an important solution to meet increasing demands for privacy compliance. However, unlearning may bring in new security concerns, such as dangers of adversarial manipulation, where the adversary may launch malicious updates or inputs to hurt the model performance or prediction, privacy-attacks, as the sensitive data can be possibly deduced from the process of unlearning, and performance degradation, because the unlearning process may break the consistency or performance of the model. In this paper, to address such issues and acquire a good and adaptive unlearning policy without causing much negative effect to the federated system, we present a reinforcement learning based method to facilitate the data unlearning method in federated learning. Our approach iteratively disposes of clients through partial unlearning, complete unlearning, or no unlearning using a DQN combined with clients’ properties like contribution, privacy cost, and computational overhead. We show that by utilizing the reinforcement learning technique, the performance decay can be defended effectively, and adversarial behaviors are indeed a common concern for the federated unlearning scenario. Our analysis can inform the development of federated unlearning frameworks that defend against performance and security threats.
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来源期刊
Journal of Information Security and Applications
Journal of Information Security and Applications Computer Science-Computer Networks and Communications
CiteScore
10.90
自引率
5.40%
发文量
206
审稿时长
56 days
期刊介绍: Journal of Information Security and Applications (JISA) focuses on the original research and practice-driven applications with relevance to information security and applications. JISA provides a common linkage between a vibrant scientific and research community and industry professionals by offering a clear view on modern problems and challenges in information security, as well as identifying promising scientific and "best-practice" solutions. JISA issues offer a balance between original research work and innovative industrial approaches by internationally renowned information security experts and researchers.
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