A Privacy-Preserving Online Deep Learning Algorithm Based on Differential Privacy

IF 2 3区 计算机科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jun Li, Fengshi Zhang, Yonghe Guo, Siyuan Li, Guanjun Wu, Dahui Li, Hongsong Zhu
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引用次数: 0

Abstract

Deep Reinforcement Learning (DRL) combines the perceptual capabilities of deep learning with the decision-making capabilities of Reinforcement Learning RL, which can achieve enhanced decision-making. However, the environmental state data contains the privacy of the users. There exists consequently a potential risk of environmental state information being leaked during RL training. Some data desensitization and anonymization technologies are currently being used to protect data privacy. There may still be a risk of privacy disclosure with these desensitization techniques. Meanwhile, policymakers need the environmental state to make decisions, which will cause the disclosure of raw environmental data. To address the privacy issues in DRL, we propose a differential privacy-based online DRL algorithm. The algorithm will add Gaussian noise to the gradients of the deep network according to the privacy budget. More important, we prove tighter bounds for the privacy budget. Furthermore, we train an autocoder to protect the raw environmental state data. In this work, we prove the privacy budget formulation for differential privacy-based online deep RL. Experiments show that the proposed algorithm can improve privacy protection while still having relatively excellent decisionmaking performance.
一种基于差分隐私保护的在线深度学习算法
深度强化学习(Deep Reinforcement Learning, DRL)将深度学习的感知能力与强化学习RL的决策能力相结合,可以实现增强决策。但是,环境状态数据包含用户的隐私。因此,在RL训练过程中存在着环境状态信息泄露的潜在风险。目前正在使用一些数据脱敏和匿名化技术来保护数据隐私。这些脱敏技术可能仍然存在隐私泄露的风险。同时,决策者需要环境状态来进行决策,这将导致原始环境数据的公开。为了解决DRL中的隐私问题,我们提出了一种基于差分隐私的在线DRL算法。该算法将根据隐私预算在深度网络的梯度中加入高斯噪声。更重要的是,我们证明了对隐私预算的更严格限制。此外,我们还训练了一个自动编码器来保护原始环境状态数据。在这项工作中,我们证明了基于差分隐私的在线深度学习的隐私预算公式。实验表明,该算法在提高隐私保护性能的同时,仍具有较好的决策性能。
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来源期刊
Computer Supported Cooperative Work-The Journal of Collaborative Computing
Computer Supported Cooperative Work-The Journal of Collaborative Computing COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.40
自引率
4.20%
发文量
31
审稿时长
>12 weeks
期刊介绍: Computer Supported Cooperative Work (CSCW): The Journal of Collaborative Computing and Work Practices is devoted to innovative research in computer-supported cooperative work (CSCW). It provides an interdisciplinary and international forum for the debate and exchange of ideas concerning theoretical, practical, technical, and social issues in CSCW. The CSCW Journal arose in response to the growing interest in the design, implementation and use of technical systems (including computing, information, and communications technologies) which support people working cooperatively, and its scope remains to encompass the multifarious aspects of research within CSCW and related areas. The CSCW Journal focuses on research oriented towards the development of collaborative computing technologies on the basis of studies of actual cooperative work practices (where ‘work’ is used in the wider sense). That is, it welcomes in particular submissions that (a) report on findings from ethnographic or similar kinds of in-depth fieldwork of work practices with a view to their technological implications, (b) report on empirical evaluations of the use of extant or novel technical solutions under real-world conditions, and/or (c) develop technical or conceptual frameworks for practice-oriented computing research based on previous fieldwork and evaluations.
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