无处不在、高效和私密的未来:通过混合同态加密实现保护隐私的机器学习

Khoa Nguyen, Mindaugas Budzys, Eugene Frimpong, Tanveer Khan, Antonis Michalas
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引用次数: 0

摘要

近年来,机器学习(ML)已成为数据科学领域最具影响力的领域之一。然而,由于针对机器学习模型的攻击不断增加,机器学习的隐私风险成为人们关注的焦点。为了减轻 ML 模型的隐私和安全风险,人们提出了隐私保护机器学习(PPML)方法。实现 PPML 的一种流行方法是使用同态加密(HE)。因此,为了克服这些挑战,最近推出了混合同态加密(HHE)--一种将对称加密与 HE 结合在一起的现代加密方案。HHE 有可能为构建高效、保护隐私的新服务奠定基础,从而将昂贵的 HE 操作转移到云中。这项工作通过为边缘设备提出资源友好型 PPML 协议,将 HHE 引入了 ML 领域。更确切地说,我们利用 HHE 作为 PPML 协议的主要构建模块。我们首先在一个虚拟数据集上广泛评估了各方的通信和计算成本,评估了我们协议的性能,并通过与使用普通 BFV 实现的类似协议进行比较,展示了我们协议的效率。随后,我们构建了一个实际的 PPML 应用程序,使用 HHE 作为其基础,根据敏感的心电图数据对心脏病进行分类,从而证明了我们构建的协议在现实世界中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pervasive, Efficient and Private Future: Realizing Privacy-Preserving Machine Learning Through Hybrid Homomorphic Encryption
Machine Learning (ML) has become one of the most impactful fields of data science in recent years. However, a significant concern with ML is its privacy risks due to rising attacks against ML models. Privacy-Preserving Machine Learning (PPML) methods have been proposed to mitigate the privacy and security risks of ML models. A popular approach to achieving PPML uses Homomorphic Encryption (HE). However, the highly publicized inefficiencies of HE make it unsuitable for highly scalable scenarios with resource-constrained devices. Hence, Hybrid Homomorphic Encryption (HHE) -- a modern encryption scheme that combines symmetric cryptography with HE -- has recently been introduced to overcome these challenges. HHE potentially provides a foundation to build new efficient and privacy-preserving services that transfer expensive HE operations to the cloud. This work introduces HHE to the ML field by proposing resource-friendly PPML protocols for edge devices. More precisely, we utilize HHE as the primary building block of our PPML protocols. We assess the performance of our protocols by first extensively evaluating each party's communication and computational cost on a dummy dataset and show the efficiency of our protocols by comparing them with similar protocols implemented using plain BFV. Subsequently, we demonstrate the real-world applicability of our construction by building an actual PPML application that uses HHE as its foundation to classify heart disease based on sensitive ECG data.
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