Multi-Constrained Top-K Graph Pattern Matching in Contextual Social Graphs

Qun Shi, Guanfeng Liu, Kai Zheng, An Liu, Zhixu Li, Lei Zhao, Xiaofang Zhou
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引用次数: 6

Abstract

Graph Pattern Matching (GPM) plays a significant role in many real applications, where given a graph pattern Q and a data graph G, computing the set M(Q, G) of matching subgraphs of Q in G. However, many applications like the experts recommendation in social networks, often need to find Top-K matches of a designated node v0, rather than the entire set M(Q, G). Moreover, the existing GPM method for matching the designated node v0 does not consider the multiple constraints of the attributes associated with each vertex and each edge which commonly exist in real applications, like the constraints of social contexts for the experts recommendation in contextual social. In this paper, we first propose the Multi-Constrained Top-K Graph Pattern Matching problem (MC-Top-K-GPM), which involves the NP-Complete Multiple Constrained GPM problem. To address the efficiency and effectiveness issues of MC-Top-K-GPM in large-scale social graphs, we propose a novel index, called HB-Tree, which indexes the label and degree of nodes in G and can get candidates of v0 efficiently. Furthermore, we develop a Multi-Constrained Top-K GPM method, called MTK, which can identify Top-K matches of v0 effectively and efficiently. Using real-life data, we experimentally verify that MTK outperforms the existing GPM algorithms in both efficiency and effectiveness in solving the MC-TOP-K GPM problem.
上下文社交图的多约束Top-K图模式匹配
图模式匹配(GPM)在许多实际应用中发挥着重要作用,给定一个图模式Q和一个数据图G,计算G中Q的匹配子图的集合M(Q, G)。然而,许多应用,如社交网络中的专家推荐,往往需要找到指定节点v0的Top-K匹配,而不是整个集合M(Q, G)。现有的匹配指定节点v0的GPM方法没有考虑实际应用中普遍存在的与每个顶点和每条边相关联的属性的多重约束,如上下文社会中专家推荐的社会背景约束。本文首先提出了多约束Top-K图模式匹配问题(MC-Top-K-GPM),该问题涉及np -完全多约束GPM问题。为了解决MC-Top-K-GPM在大规模社交图中的效率和有效性问题,我们提出了一种新的索引HB-Tree,它对G中节点的标签和度进行索引,可以有效地获得v0的候选节点。此外,我们开发了一种多约束Top-K GPM方法,称为MTK,它可以有效地识别v0的Top-K匹配。使用实际数据,我们实验验证了MTK在解决MC-TOP-K GPM问题的效率和有效性方面优于现有的GPM算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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