This study concentrates on preserving privacy in a network of agents where each agent seeks to evaluate a general polynomial function over the private values of her immediate neighbors. We provide an algorithm for the exact evaluation of such functions while preserving privacy of the involved agents. The solution is based on a reformulation of polynomials and adoption of two cryptographic primitives: Paillier as a Partially Homomorphic Encryption scheme and multiplicative-additive secret sharing. The provided algorithm is fully distributed, lightweight in communication, robust to dropout of agents, and can accommodate a wide class of functions. Moreover, system theoretic and secure multi-party conditions guaranteeing the privacy preservation of an agent's private values against a set of colluding agents are established. The theoretical developments are complemented by numerical investigations illustrating the accuracy of the algorithm and the resulting computational cost.
翻译:这项研究的重点是保护代理人网络的隐私,每个代理人试图在这个网络中评估其近邻私人价值的一般多面功能,我们为准确评估这些功能提供算法,同时保护所涉代理人的隐私,解决方案的基础是重新制定多面性,采用两种加密原始法:部分同质加密法和多复制的共享秘密。所提供的算法是完全分布的、轻量的通讯、对代理人退职的有力和能够容纳广泛的功能。此外,还建立了系统理论和安全的多党条件,保证代理人的私人价值与一组串通代理人的隐私得到保护。理论发展还辅之以数字调查,说明算法的准确性及其产生的计算成本。