Privacy-preserving logistic regression with improved efficiency

IF 3.8 2区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information Security and Applications Pub Date : 2024-08-09 DOI:10.1016/j.jisa.2024.103848
Miaomiao Tian , Jiale Liu , Zhili Chen , Shaowei Wang
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Abstract

Logistic regression is a well-known method for classification and is being widely used in our daily life. To obtain a logistic regression model with sufficient accuracy, collecting a large number of data samples from multiple sources is necessary. However, in nowadays a concern about the leakage of private information contained in data samples becomes increasingly prominent, and thus privacy-preserving logistic regression that enables training logistic regression models without privacy leakage has received great attention from the community. Mohassel and Zhang at IEEE S&P’17 presented a significant protocol for privacy-preserving logistic regression in two-server setting, where two non-colluding servers collaboratively train logistic regression models in an offline–online manner. In this work, we propose a new two-server-based protocol for privacy-preserving logistic regression with an efficient approach to activation function evaluation, which incurs much less computational overhead than Mohassel–Zhang protocol while requiring the same number of online rounds. We also present a round-efficient protocol for generating correlated randomness that will be used subsequently in our activation function evaluation. We implement our protocol in C++ and the experimental results validate its efficiency.

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提高效率的隐私保护逻辑回归
逻辑回归是一种众所周知的分类方法,在我们的日常生活中得到了广泛应用。要获得足够准确的逻辑回归模型,必须从多个来源收集大量数据样本。然而,如今人们对数据样本中包含的隐私信息泄露的担忧日益突出,因此能在不泄露隐私的情况下训练逻辑回归模型的隐私保护逻辑回归受到了社会各界的极大关注。Mohassel 和 Zhang 在 IEEE S&P'17 大会上提出了一种重要的双服务器环境下隐私保护逻辑回归协议,即两个非共用服务器以离线-在线方式协作训练逻辑回归模型。在这项工作中,我们提出了一种基于双服务器的新隐私保护逻辑回归协议,它采用了一种高效的激活函数评估方法,与 Mohassel-Zhang 协议相比,它的计算开销要少得多,但所需的在线轮数相同。我们还提出了一种生成相关随机性的高效回合协议,随后将用于我们的激活函数评估。我们用 C++ 实现了我们的协议,实验结果验证了其效率。
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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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