A comparative study of combining deep learning and homomorphic encryption techniques

Emad M. Alsaedi, Alaa Kadhim
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Abstract

Deep learning simulation necessitates a considerable amount of internal computational resources and fast training for large amounts of data. The cloud has been delivering software to help with this transition in recent years, posing additional security risks to data breaches. Modern encryption schemes maintain personal secrecy and are the best method for protecting data stored on a server and data sent from an unauthorized third party. However, when data must be stored or analyzed, decryption is needed, and homomorphic encryption was the first symptom of data security issues found with Strong Encryption.It enables an untrustworthy cloud resource to process encrypted data without revealing sensitive information. This paper looks at the fundamental principles of homomorphic encryption, their forms, and how to integrate them with deep learning. Researchers are particularly interested in privacy-preserving Homomorphic encryption schemes for neural networks. Finally, present options, open problems, threats, prospects, and new research paths are identified across networks
结合深度学习和同态加密技术的比较研究
深度学习模拟需要大量的内部计算资源和对大量数据的快速训练。近年来,云计算一直在提供软件来帮助实现这一转变,这给数据泄露带来了额外的安全风险。现代加密方案保持个人保密,是保护存储在服务器上的数据和从未经授权的第三方发送的数据的最佳方法。然而,当必须存储或分析数据时,就需要解密,同态加密是使用强加密发现的数据安全问题的第一个症状。它使不可信的云资源能够在不泄露敏感信息的情况下处理加密数据。本文着眼于同态加密的基本原理,它们的形式,以及如何将它们与深度学习相结合。研究人员对保护隐私的神经网络同态加密方案特别感兴趣。最后,通过网络确定当前的选择、开放的问题、威胁、前景和新的研究路径
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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