分布式图中保护隐私的最大流计算

Xiaoyun He, Jaideep Vaidya, Basit Shafiq, N. Adam
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引用次数: 2

摘要

最大流量问题出现在各种各样的应用程序中,例如金融交易和物流协作网络,其中的数据可以建模为有向图。在许多这样的应用程序中,图形数据实际上分布在几个组织中,每个组织拥有整个图形的一部分。出于隐私考虑,各方可能不希望披露他们的本地图表。然而,计算整个图的最大流量给相关利益相关者带来了巨大的利益。本文研究了分布式图中保护隐私的最大流计算问题。我们提出了一种两阶段的方法,在确保正确的最大流量计算的同时实现隐私保护。在第一阶段,使用一种新的概率边缘扩展过程来模糊图结构并防止节点重新识别,同时保持最大流量;第二阶段将局部图安全地集成到全局整体中,以便任何第三方都可以计算最大流量。我们提供了一个彻底的正确性和隐私分析,并实验评估了所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving Maximum-Flow Computation in Distributed Graphs
The maximum-flow problem arises in a wide variety of applications such as financial transactions and logistics collaboration networks, where the data can be modeled as a directed graph. In many such applications, the graph data is actually distributed across several organizations where each owns a portion of the overall graph. Due to privacy concerns, the parties may not wish to disclose their local graphs. However, the computation of maximum-flow over the overall graph brings great benefits to concerned stakeholders. In this paper, we address the privacy preserving maximum-flow computation problem in distributed graphs. We propose a two-stage approach that achieves privacy protection while ensuring the correct maximum flow computation. In the first stage, a novel probabilistic edge expansion process is used to obfuscate the graph structure and prevent node re-identification while preserving the maximum flow, the second stage securely integrates local graphs into a global whole such that any third party can then compute the maximum flow. We provide a thorough correctness and privacy analysis and experimentally evaluate the proposed approach.
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