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Mining closed relational graphs with connectivity constraints

机译:挖掘具有连通性约束的封闭关系图

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Relational graphs are widely used in modeling large scale networks such as biological networks and social networks. In this kind of graph, connectivity becomes critical in identifying highly associated groups and clusters. In this paper, we investigate the issues of mining closed frequent graphs with connectivity constraints in massive relational graphs where each graph has around 10K nodes and 1M edges. We adopt the concept of edge connectivity and apply the results from graph theory, to speed up the mining process. Two approaches are developed to handle different mining requests: CloseCut, a pattern-growth approach, and splat, a pattern-reduction approach. We have applied these methods in biological datasets and found the discovered patterns interesting.
机译:关系图已广泛用于对大型网络(例如生物网络和社交网络)进行建模。在这种图中,连通性对于确定高度相关的组和集群至关重要。在本文中,我们研究了在大规模关系图中挖掘具有连通性约束的封闭频繁图的问题,其中每个图都有大约10K节点和1M边。我们采用边缘连通性的概念,并应用图论的结果来加快挖掘过程。开发了两种方法来处理不同的挖掘请求:模式增长方法 CloseCut 和模式减少方法 splat 。我们已将这些方法应用于生物学数据集中,并发现了有趣的发现模式。

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