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A New Measure of Modularity in Hypergraphs: Theoretical Insights and Implications for Effective Clustering

机译:超图中模块化的新措施:有效聚类的理论见解和含义

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Many real-world systems consist of entities that exhibit complex group interactions rather than simple pairwise relationships; such multi-way relations are more suitably modeled using hypergraphs. In this work, we generalize the framework of modularity maximization, commonly used for community detection on graphs, for the hypergraph clustering problem. We introduce a hypergraph null model that can be shown to correspond exactly to the configuration model for undirected graphs. We then derive an adjacency matrix reduction that preserves the hypergraph node degree sequence, for use with this null model. The resultant modularity function can be maximized using the Louvain method, a popular fast algorithm known to work well in practice for graphs. We additionally propose an iterative refinement over this clustering that exploits higher-order information within the hypergraph, seeking to encourage balanced hyperedge cuts. We demonstrate the efficacy of our methods on several real-world datasets.
机译:许多现实世界的系统由实体组成,实体展示了复杂的群体交互而不是简单的成对关系;这种多向关系使用超图更适当地建模。在这项工作中,我们概括了模块化最大化的框架,通常用于图形上的社区检测,对于超图集群问题。我们介绍一个超图空模型,可以显示为完全对应于无向图形的配置模型。然后,我们得出了一种邻接矩阵,可以保留超图节点度序列,以便与此空模型一起使用。使用Louvain方法可以最大化所得模块化函数,这是一个熟悉的快速算法在实践中工作很好。我们还提出了对这种聚类的迭代改进,该聚类可以利用超图中的高阶信息,寻求鼓励平衡的超支削减。我们展示了我们对几个现实世界数据集的方法的功效。

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