云中大图的保密性子图匹配

Zhao Chang, Lei Zou, Feifei Li
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引用次数: 32

摘要

大型图形数据的广泛存在以及在云中存储数据的日益普及推动了对远程云上的图形查询处理的需求。但是一个基本的挑战是在不损害敏感信息的情况下处理用户查询。本文主要研究了云服务器中保护隐私的子图匹配问题。目标是在不影响用户敏感信息的情况下,将云计算和客户端在子图匹配方面的开销最小化。为此,我们将原始图$G$转换为隐私保护图Gk,该图Gk满足现有隐私模型k自同构的要求。通过利用k自同构图的对称性,可以使用图Go (Gk的一个小子集)有效地回答子图匹配查询。这种方法节省了云服务器中的空间和查询成本。我们还使用标签泛化技术对查询图进行匿名化处理,以保护其标签信息。为了减少子图匹配查询的搜索空间,我们提出了一个成本模型来选择更有效的标签组合。在实际数据集上的大量实验结果证明了该方法的有效性和高效性。
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 Subgraph Matching on Large Graphs in Cloud
The wide presence of large graph data and the increasing popularity of storing data in the cloud drive the needs for graph query processing on a remote cloud. But a fundamental challenge is to process user queries without compromising sensitive information. This work focuses on privacy preserving subgraph matching in a cloud server. The goal is to minimize the overhead on both cloud and client sides for subgraph matching, without compromising users' sensitive information. To that end, we transform an original graph $G$ into a privacy preserving graph Gk, which meets the requirement of an existing privacy model known as k-automorphism. By making use of the symmetry in a k-automorphic graph, a subgraph matching query can be efficiently answered using a graph Go, a small subset of Gk. This approach saves both space and query cost in the cloud server. We also anonymize the query graphs to protect their label information using label generalization technique. To reduce the search space for a subgraph matching query, we propose a cost model to select the more effective label combinations. The effectiveness and efficiency of our method are demonstrated through extensive experimental results on real datasets.
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