同态加密
计算机科学
云计算
加密
外包
Paillier密码体制
乘法(音乐)
计算
信息隐私
理论计算机科学
分布式计算
计算机安全
算法
公钥密码术
操作系统
物理
混合密码体制
声学
法学
政治学
作者
Kaiyang Zhao,Xu An Wang,Bo Yang,Youliang Tian,Jindan Zhang
标识
DOI:10.1016/j.ipm.2022.102880
摘要
Predictive computation now is a more and more popular paradigm for artificial intelligence. In this article, we discuss how to design a privacy preserving computing toolkit for secure predictive computation in smart cities. Predictive computation technology is very important in the management of cloud data in smart cities, which can realize intelligent computing and efficient management of cloud data in the city. Concretely, we propose a homomorphic outsourcing computing toolkit to protect the privacy of multiple users for predictive computation. It can meet the needs of large-scale users to securely outsource their data to cloud servers for storage, management and processing of their own data. This toolkit, using the Paillier encryption system and Lagrangian interpolation law, can implement most commonly basic calculations such as addition, subtraction, multiplication and division etc. It can also implement secure comparison of user data in the encrypted domain. In addition, we discuss how to implement the derivative of polynomial functions using our homomorphic computing encryption tool. We also introduce its application in neural networks. Finally, we demonstrate the security and efficiency of all our protocols through rigorous mathematical analysis and performance analysis. The results show that our toolkit is efficient and secure.
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