基于预分布数据的分布式数据集快速、保护隐私的线性回归

M. D. Cock, Rafael Dowsley, Anderson C. A. Nascimento, S. Newman
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引用次数: 80

摘要

这项工作提出了一种对分布在多方的数据集执行线性回归的协议。双方将共同计算线性回归模型,而无需实际共享各自的私有数据集。我们提供了安全定义、协议和安全证明。我们的解决方案在信息理论上是安全的,并且基于可信初始化器在设置阶段向各方预分发随机相关数据的假设。实际计算稍后在联机阶段进行,并且不涉及可信初始化器。我们的在线协议比以前的解决方案快了几个数量级。在不可用可信初始化器的情况下,我们提出了一种基于加性同态加密的计算安全的两方协议,以替代可信初始化器。在这种情况下,在线阶段保持不变,而离线阶段的计算量很大。然而,由于脱机阶段的计算是在随机数据上进行的,所以整个问题是可以并行化的,这使得它比具有适当核数的处理器的现有解决方案更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast, Privacy Preserving Linear Regression over Distributed Datasets based on Pre-Distributed Data
This work proposes a protocol for performing linear regression over a dataset that is distributed over multiple parties. The parties will jointly compute a linear regression model without actually sharing their own private datasets. We provide security definitions, a protocol, and security proofs. Our solution is information-theoretically secure and is based on the assumption that a Trusted Initializer pre-distributes random, correlated data to the parties during a setup phase. The actual computation happens later on, during an online phase, and does not involve the trusted initializer. Our online protocol is orders of magnitude faster than previous solutions. In the case where a trusted initializer is not available, we propose a computationally secure two-party protocol based on additive homomorphic encryption that substitutes the trusted initializer. In this case, the online phase remains the same and the offline phase is computationally heavy. However, because the computations in the offline phase happen over random data, the overall problem is embarrassingly parallelizable, making it faster than existing solutions for processors with an appropriate number of cores.
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