PReDIHERO – Privacy-Preserving Remote Deep Learning Inference based on Homomorphic Encryption and Reversible Obfuscation for Enhanced Client-side Overhead in Pervasive Health Monitoring

Amine Boulemtafes, A. Derhab, Nassim Ait Ali Braham, Y. Challal
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引用次数: 2

Abstract

Homomorphic Encryption is one of the most promising techniques to deal with privacy concerns, which is raised by remote deep learning paradigm, and maintain high classification accuracy. However, homomorphic encryption-based solutions are characterized by high overhead in terms of both computation and communication, which limits their adoption in pervasive health monitoring applications with constrained client-side devices. In this paper, we propose PReDIHERO, an improved privacy-preserving solution for remote deep learning inferences based on homomorphic encryption. The proposed solution applies a reversible obfuscation technique that successfully protects sensitive information, and enhances the client-side overhead compared to the conventional homomorphic encryption approach. The solution tackles three main heavyweight client-side tasks, namely, encryption and transmission of private data, refreshing encrypted data, and outsourcing computation of activation functions. The efficiency of the client-side is evaluated on a healthcare dataset and compared to a conventional homomorphic encryption approach. The evaluation results show that PReDIHERO requires increasingly less time and storage in comparison to conventional solutions when inferences are requested. At two hundreds inferences, the improvement ratio could reach more than 30 times in terms of computation overhead, and more than 8 times in terms of communication overhead. The same behavior is observed in sequential data and batch inferences, as we record an improvement ratio of more than 100 times in terms of computation overhead, and more than 20 times in terms of communication overhead.
PReDIHERO——基于同态加密和可逆混淆的保护隐私的远程深度学习推断,用于增强普然健康监控中客户端开销
同态加密是解决远程深度学习范式提出的隐私问题并保持较高分类精度的最有前途的技术之一。然而,基于同态加密的解决方案在计算和通信方面的开销都很高,这限制了它们在具有受限客户端设备的普及健康监控应用程序中的采用。在本文中,我们提出了PReDIHERO,一种改进的基于同态加密的远程深度学习推理隐私保护方案。所提出的解决方案应用可逆混淆技术,成功地保护了敏感信息,并且与传统的同态加密方法相比,增强了客户端开销。该解决方案处理三个主要的重量级客户端任务,即私有数据的加密和传输、加密数据的刷新以及激活函数的外包计算。在医疗保健数据集上评估客户端的效率,并与传统的同态加密方法进行比较。评估结果表明,与传统方法相比,PReDIHERO在需要推理时所需的时间和存储空间越来越少。在200次推理时,改进率在计算开销方面可以达到30倍以上,在通信开销方面可以达到8倍以上。在顺序数据和批处理推断中也观察到相同的行为,因为我们记录的计算开销方面的改进比超过100倍,通信开销方面的改进比超过20倍。
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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