MiMAG: mining coherent subgraphs in multi-layer graphs with edge labels

被引:0
|
作者
Brigitte Boden
Stephan Günnemann
Holger Hoffmann
Thomas Seidl
机构
[1] RWTH Aachen University,Data Management and Data Exploration Group
[2] Technical University of Munich,Department of Informatics
来源
关键词
Clustering; Graph; Network; Subspace; Multi-layer graph; Labels;
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暂无
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学科分类号
摘要
Detecting dense subgraphs such as cliques or quasi-cliques is an important graph mining problem. While this task is established for simple graphs, today’s applications demand the analysis of more complex graphs: In this work, we consider a frequently observed type of graph where edges represent different types of relations. These multiple edge types can also be viewed as different “layers” of a graph, which is denoted as a “multi-layer graph”. Additionally, each edge might be annotated by a label characterizing the given relation in more detail. By simultaneously exploiting all this information, the detection of more interesting subgraphs can be supported. We introduce the multi-layer coherent subgraph model, which defines clusters of vertices that are densely connected by edges with similar labels in a subset of the graph layers. We avoid redundancy in the result by selecting only the most interesting, non-redundant subgraphs for the output. Based on this model, we introduce the best-first search algorithm MiMAG. In thorough experiments, we demonstrate the strengths of MiMAG in comparison with related approaches on synthetic as well as real-world data sets.
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页码:417 / 446
页数:29
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