Experimental Evaluation of Homomorphic Encryption in Cloud and Edge Machine Learning

Joe Hrzich, Gunjan Basra, Talal Halabi
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引用次数: 1

Abstract

Machine Learning (ML)-based intelligent services are gradually becoming the leading service design and delivery model in edge computing, where user and device data is outsourced to take part of large-scale BigData analytics. This paradigm however entails challenging security and privacy concerns, which require rethinking the fundamental concepts behind performing ML. For instance, the encryption of sensitive data provides a straightforward solution that ensures data security and privacy. In particular, Homomorphic encryption allows arbitrary computation on encrypted data and has gained a lot of attention recently. However, it has not been fully adopted by edge computing-based ML due to its potential impact on classification accuracy and model performance. This paper conducts an experimental evaluation of different types of Homomorphic encryption techniques, namely, Partial, Somewhat, and Fully Homomorphic encryption over several ML models, which train on encrypted data and produce classification predictions based on encrypted input data. The results demonstrate two potential directions in the context of ML privacy at the network edge: privacy-preserving training and privacy-preserving classification. The performance of encryption-driven ML models is compared using different metrics such as accuracy and computation time for plaintext vs. encrypted text. This evaluation will guide future research in investigating which ML models perform better over encrypted data.
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云和边缘机器学习中同态加密的实验评价
基于机器学习(ML)的智能服务正逐渐成为边缘计算领域领先的服务设计和交付模式,用户和设备数据被外包,以参与大规模大数据分析。然而,这种模式需要挑战安全和隐私问题,这需要重新思考执行ML背后的基本概念。例如,敏感数据的加密提供了一个确保数据安全和隐私的直接解决方案。特别是,同态加密允许对加密数据进行任意计算,最近引起了人们的广泛关注。然而,由于其对分类精度和模型性能的潜在影响,它尚未被基于边缘计算的机器学习完全采用。本文在几种ML模型上对不同类型的同态加密技术,即部分、部分和完全同态加密进行了实验评估,这些模型在加密数据上进行训练,并基于加密输入数据产生分类预测。结果表明,在网络边缘的ML隐私环境中,有两个潜在的方向:隐私保护训练和隐私保护分类。使用不同的度量来比较加密驱动的ML模型的性能,例如纯文本与加密文本的准确性和计算时间。这一评估将指导未来的研究,以调查哪种ML模型在加密数据上表现更好。
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