Achieving Efficient and Privacy-Preserving Neural Network Training and Prediction in Cloud Environments

IF 7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Chuan Zhang, Chenfei Hu, Tong Wu, Liehuang Zhu, Ximeng Liu
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引用次数: 19

Abstract

The neural network has been widely used to train predictive models for applications such as image processing, disease prediction, and face recognition. To produce more accurate models, powerful third parties (e.g., clouds) are usually employed to collect data from a large number of users, which however may raise concerns about user privacy. In this paper, we propose an Efficient and Privacy-preserving Neural Network scheme, named EPNN, to deal with the privacy issues in cloud-based neural networks. EPNN is designed based on a two-cloud model and techniques of data perturbation and additively homomorphic cryptosystem. This scheme enables two clouds to cooperatively perform neural network training and prediction in a privacy-preserving manner and significantly reduces the computation and communication overhead among participating entities. Through a detailed analysis, we demonstrate the security of EPNN. Extensive experiments based on real-world datasets show EPNN is more efficient than existing schemes in terms of computational costs and communication overhead.
在云环境中实现高效且保密的神经网络训练和预测
神经网络已被广泛用于训练预测模型,用于图像处理、疾病预测和人脸识别等应用。为了产生更准确的模型,通常会使用强大的第三方(例如云)来收集大量用户的数据,但这可能会引起对用户隐私的担忧。为了解决基于云的神经网络中的隐私问题,本文提出了一种高效且保护隐私的神经网络方案——EPNN。EPNN是基于二云模型和数据摄动和加性同态密码系统技术设计的。该方案使两个云能够以保护隐私的方式协同进行神经网络训练和预测,显著降低了参与实体之间的计算和通信开销。通过详细的分析,证明了EPNN的安全性。基于真实数据集的大量实验表明,EPNN在计算成本和通信开销方面比现有方案更有效。
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来源期刊
IEEE Transactions on Dependable and Secure Computing
IEEE Transactions on Dependable and Secure Computing 工程技术-计算机:软件工程
CiteScore
11.20
自引率
5.50%
发文量
354
审稿时长
9 months
期刊介绍: The "IEEE Transactions on Dependable and Secure Computing (TDSC)" is a prestigious journal that publishes high-quality, peer-reviewed research in the field of computer science, specifically targeting the development of dependable and secure computing systems and networks. This journal is dedicated to exploring the fundamental principles, methodologies, and mechanisms that enable the design, modeling, and evaluation of systems that meet the required levels of reliability, security, and performance. The scope of TDSC includes research on measurement, modeling, and simulation techniques that contribute to the understanding and improvement of system performance under various constraints. It also covers the foundations necessary for the joint evaluation, verification, and design of systems that balance performance, security, and dependability. By publishing archival research results, TDSC aims to provide a valuable resource for researchers, engineers, and practitioners working in the areas of cybersecurity, fault tolerance, and system reliability. The journal's focus on cutting-edge research ensures that it remains at the forefront of advancements in the field, promoting the development of technologies that are critical for the functioning of modern, complex systems.
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