Computing Blindfolded on Data Homomorphically Encrypted under Multiple Keys: A Survey

Asma Aloufi, Peizhao Hu, Yongsoo Song, K. Lauter
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引用次数: 11

Abstract

With capability of performing computations on encrypted data without needing the secret key, homomorphic encryption (HE) is a promising cryptographic technique that makes outsourced computations secure and privacy-preserving. A decade after Gentry’s breakthrough discovery of how we might support arbitrary computations on encrypted data, many studies followed and improved various aspects of HE, such as faster bootstrapping and ciphertext packing. However, the topic of how to support secure computations on ciphertexts encrypted under multiple keys does not receive enough attention. This capability is crucial in many application scenarios where data owners want to engage in joint computations and are preferred to protect their sensitive data under their own secret keys. Enabling this capability is a non-trivial task. In this article, we present a comprehensive survey of the state-of-the-art multi-key techniques and schemes that target different systems and threat models. In particular, we review recent constructions based on Threshold Homomorphic Encryption (ThHE) and Multi-Key Homomorphic Encryption (MKHE). We analyze these cryptographic techniques and schemes based on a new secure outsourced computation model and examine their complexities. We share lessons learned and draw observations for designing better schemes with reduced overheads.
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多密钥同态加密数据的盲计算研究综述
同态加密(HE)能够在不需要密钥的情况下对加密数据执行计算,是一种很有前途的加密技术,它使外包计算变得安全和隐私保护。在Gentry突破性发现如何支持加密数据上的任意计算十年后,许多研究跟进并改进了HE的各个方面,例如更快的引导和密文打包。然而,如何支持对多密钥加密的密文进行安全计算的问题却没有得到足够的重视。在许多应用程序场景中,此功能至关重要,因为数据所有者希望参与联合计算,并且倾向于使用自己的密钥保护敏感数据。启用此功能是一项非常重要的任务。在本文中,我们对针对不同系统和威胁模型的最先进的多密钥技术和方案进行了全面的调查。特别地,我们回顾了最近基于阈值同态加密(ThHE)和多密钥同态加密(MKHE)的结构。我们基于一种新的安全外包计算模型分析了这些加密技术和方案,并分析了它们的复杂性。我们分享了经验教训,并得出了设计更好的方案并减少了管理费用的观察结果。
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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