大型社交网络中的子图匹配和中心性

Noseong Park, Michael Ovelgönne, V. S. Subrahmanian
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引用次数: 1

摘要

经典的中心性度量,如中间度、接近度、特征向量和度中心性是与应用程序和用户无关的。它们也独立于图语义。然而,在许多应用程序中,用户清楚地知道在顶点和边具有属性的图中他们认为谁是重要的,本文的目标是使他们能够在定义图中的中心性时将他们的知识带到表中。我们提出了一种新的子图匹配查询组合,该组合在RDF和社交网络以及评分函数的背景下得到了广泛的研究。由此产生的SMAC框架允许用户通过用户定义的子图模式和他指定的某些数学度量来定义他认为的网络中的中心顶点。我们正式定义了SMAC查询,并开发了算法来计算这些查询的答案。我们在CiteSeerX、Flickr、YouTube和IMDb的真实数据集上测试了我们的算法,这些数据集包含超过6M个顶点和15M条边,并表明我们的算法在实践中运行良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SMAC: Subgraph Matching and Centrality in Huge Social Networks
Classical centrality measures like betweenness, closeness, eigenvector, and degree centrality are application and user independent. They are also independent of graph semantics. However, in many applications, users have a clear idea of who they consider important in graphs where vertices and edges have properties, and the goal of this paper is to enable them to bring their knowledge to the table in defining centrality in graphs. We propose a novel combination of sub graph matching queries which have been studied extensively in the context of both RDF and social networks, and scoring functions. The resulting SMAC framework allows a user to define what he thinks are central vertices in a network via user-defined sub graph patterns and certain mathematical measures he specifies. We formally define SMAC queries and develop algorithms to compute answers to such queries. We test our algorithms on real-world data sets from CiteSeerX, Flickr, YouTube, and IMDb containing over 6M vertices and 15M edges and show that our algorithms work well in practice.
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