分布图中的保隐私三角形计数

H. Do, W. Ng
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引用次数: 3

摘要

随着图结构在现实世界数据中的普及,图分析已成为一个有吸引力的研究课题。三角形计数是典型的图挖掘任务之一,在复杂网络分析中发挥着重要作用,在社会网络分析、垃圾邮件检测、计算机辅助设计等应用中有着广泛的应用。鉴于图形数据的敏感性,为分析目的而披露图形内容可能会引起个人和组织的主要隐私问题。在本文中,我们提出了一种在整个图分布到不同参与方的情况下保持隐私的三角形计数协议。我们首先在两方场景中展示解决方案,然后将协议扩展到任意数量的参与方。图结构用邻接矩阵表示,并利用加密安全矩阵计算来解决问题。提出了一个安全的多方幂矩阵和协议作为解决方案的构建块。我们从分析和经验两方面评估了所提出协议的计算复杂性和可扩展性。结果表明,该协议对于中小型数据具有较高的效率和可扩展性。
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 Triangle Counting in Distributed Graphs
Together with the popularity of graph structure in real world data, graph analysis has become an attractive research topic. Triangle counting is one of typical graph mining tasks and plays a significant role in complex network analysis, with a wide range of applications in social network analysis, spam detection, and computer-aided design applications. Given the sensitive nature of graph data, the disclosure of graph content for the purpose of analysis may raise a major privacy concern to both individuals and organizations. In this paper, we propose a protocol for privacy-preserving triangle counting when the overall graph is distributed to different parties. We firstly present the solution in a two-party scenario and then extend the protocol to any number of participating parties. The graph structure is represented by an adjacency matrix, and cryptographic secure matrix computation is utilized to tackle the problem. A secure multi-party power of matrix sum protocol is proposed to serve as a building block for the solution. We have evaluated the computational complexity and scalability of the proposed protocols both analytically and empirically. The results show that the protocols are efficient and scalable for small and medium size data.
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