首页> 外文会议>Data Mining, 2009. ICDM '09 >Constraint-Based Pattern Mining in Dynamic Graphs
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Constraint-Based Pattern Mining in Dynamic Graphs

机译:动态图中基于约束的模式挖掘

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Dynamic graphs are used to represent relationships between entities that evolve over time. Meaningful patterns in such structured data must capture strong interactions and their evolution over time. In social networks, such patterns can be seen as dynamic community structures, i.e., sets of individuals who strongly and repeatedly interact. In this paper, we propose a constraint-based mining approach to uncover evolving patterns. We propose to mine dense and isolated subgraphs defined by two user-parameterized constraints. The temporal evolution of such patterns is captured by associating a temporal event type to each identified subgraph. We consider five basic temporal events: The formation, dissolution, growth, diminution and stability of subgraphs from one time stamp to the next. We propose an algorithm that finds such subgraphs in a time series of graphs processed incrementally. The extraction is feasible due to efficient patterns and data pruning strategies. We demonstrate the applicability of our method on several real-world dynamic graphs and extract meaningful evolving communities.
机译:动态图用于表示随时间演变的实体之间的关系。此类结构化数据中有意义的模式必须捕获强大的交互作用及其随时间的演变。在社交网络中,这种模式可以看作是动态的社区结构,即强烈且反复互动的个人集合。在本文中,我们提出了一种基于约束的挖掘方法来发现演化模式。我们建议挖掘由两个用户参数化约束定义的密集子图和孤立子图。通过将时间事件类型与每个标识的子图相关联,可以捕获此类模式的时间演变。我们考虑五个基本的时间事件:从一个时间戳到另一个时间戳的子图的形成,分解,增长,缩小和稳定性。我们提出了一种算法,该算法可在逐步处理的图形的时间序列中找到此类子图。由于有效的模式和数据修剪策略,因此提取是可行的。我们在几种真实世界的动态图上证明了我们方法的适用性,并提取了有意义的不断发展的社区。

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