Secure Data Computation Using Deep Learning and Homomorphic Encryption: A Survey

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Anmar A. Al-Janabi, Sufyan T. Faraj Al-Janabi, Belal Al-Khateeb
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引用次数: 0

Abstract

Deep learning and its variant techniques have surpassed classical machine algorithms due to their high performance gaining remarkable results and are used in a broad range of applications. However, adopting deep learning models over the cloud introduces privacy and security issues for data owners and model owners, including computational inefficiency, expansion in ciphertext, error accumulation, security and usability trade-offs, and deep learning model attacks. With homomorphic encryption, computations on encrypted data can be performed without disclosing its content. This research examines the basic concepts of homomorphic encryption limitations, benefits, weaknesses, possible applications, and development tools concentrating on neural networks. Additionally, we looked at systems that integrate neural networks with homomorphic encryption in order to maintain privacy. Furthermore, we classify modifications made on neural network models and architectures that make them computable via homomorphic encryption and the effect of these changes on performance. This paper introduces a thorough review focusing on the privacy of homomorphic cryptosystems targeting neural network models and identifies existing solutions, analyzes potential weaknesses, and makes recommendations for further research.
使用深度学习和同态加密的安全数据计算:综述
深度学习及其变体技术由于其高性能而超过了经典的机器算法,取得了显著的效果,并在广泛的应用中得到了应用。然而,在云上采用深度学习模型会给数据所有者和模型所有者带来隐私和安全问题,包括计算效率低下、密文扩展、错误积累、安全性和可用性权衡,以及深度学习模型攻击。利用同态加密,可以在不公开加密数据内容的情况下对加密数据进行计算。这项研究考察了同态加密的基本概念——局限性、优点、弱点、可能的应用以及专注于神经网络的开发工具。此外,我们研究了将神经网络与同态加密相结合以保持隐私的系统。此外,我们对通过同态加密使神经网络模型和架构可计算的修改以及这些变化对性能的影响进行了分类。本文以神经网络模型为目标,对同态密码系统的隐私性进行了全面的综述,并确定了现有的解决方案,分析了潜在的弱点,并提出了进一步研究的建议。
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
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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