Online privacy preserving outsourcing of large matrix multiplication

Fatemeh Erfan, H. Mala
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引用次数: 3

Abstract

Outsourcing computation to cloud server has recently become popular in cloud computing. Cloud computing technologies enable clients with limited computational resources to outsource their massive computations to powerful cloud servers. Outsourcing computation has some new concerns, such as outsourced data and result privacy, verifiability and efficiency. Matrix multiplication is one of the most basic computational problems. In this paper, we are motivated to design a secure and efficient protocol for outsourcing the massive matrix multiplication computations to the cloud server. The existing works are mostly under amortized model that have an expensive phase as offline mode. Our proposed scheme does not have any expensive phase. So the client can outsource its matrices in online mode in which the efficiency of outsourcing will be increased. In our scheme, the client encrypts two matrices and sends them to a semi-honest cloud server. The cloud server computes matrix multiplication and a proof. After that, it sends the encrypted result to the client and finally the client checks the validity of the computation and decrypts the result. Our proposed scheme achieves privacy protection of outsourced data and multiplication result, unforgeability of proof, verification and high efficiency.
大矩阵乘法的在线隐私保护外包
将计算外包给云服务器是近年来云计算领域的一种流行趋势。云计算技术使计算资源有限的客户能够将其大量计算外包给功能强大的云服务器。外包计算有一些新的问题,如外包数据和结果的隐私性、可验证性和效率。矩阵乘法是最基本的计算问题之一。在本文中,我们设计了一种安全高效的协议,将大量矩阵乘法计算外包给云服务器。现有的工作大多是在平摊模式下,并且有一个昂贵的阶段作为离线模式。我们提出的方案没有任何昂贵的阶段。因此,客户可以通过在线方式将其矩阵外包出去,从而提高外包的效率。在我们的方案中,客户端加密两个矩阵并将它们发送到半诚实的云服务器。云服务器计算矩阵乘法和证明。然后将加密的结果发送给客户端,最后客户端检查计算的有效性并对结果进行解密。我们提出的方案实现了外包数据和乘法结果的隐私保护、证明的不可伪造性、可验证性和高效率。
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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