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Local Expansion and Optimization for Higher-Order Graph Clustering

机译:高阶图聚类的局部扩展与优化

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Graph clustering aims to identify clusters that feature tighter connections between internal nodes than external nodes. We noted that conventional clustering approaches based on a single vertex or edge cannot meet the requirements of clustering in a higher-order mixed structure formed by multiple nodes in a complex network. Considering the above limitation, we are aware of the fact that a clustering coefficient can measure the degree to which nodes in a graph tend to cluster, even if only a small area of the graph is given. In this paper, we introduce a new cluster quality score, i.e., the local motif rate, which can effectively respond to the density of clusters in a higher-order graph. We also propose a motif-based local expansion and optimization algorithm (MLEO) to improve local higher-order graph clustering. This algorithm is a purely local algorithm and can be applied directly to higher-order graphs without conversion to a weighted graph, thus avoiding distortion of the transform. In addition, we propose a new seed-processing strategy in a higher-order graph. The experimental results show that our proposed strategy can achieve better performance than the existing approaches when using a quadrangle as the motif in the LFR network and the value of the mixing parameter mu exceeds 0.6.
机译:图集群的目的是识别内部节点之间的连接比外部节点更紧密的集群。我们注意到,基于单个顶点或边的常规聚类方法无法满足由复杂网络中多个节点形成的高阶混合结构中聚类的要求。考虑到上述限制,我们知道一个事实,即即使仅给出一小部分图形,聚类系数也可以衡量图形中节点趋于聚类的程度。在本文中,我们引入了一个新的聚类质量得分,即局部基序比率,它可以有效地响应高阶图中的聚类密度。我们还提出了基于母题的局部扩展和优化算法(MLEO),以改善局部高阶图聚类。该算法是纯粹的局部算法,可以直接应用于高阶图,而无需转换为加权图,从而避免了变换的失真。此外,我们在高阶图中提出了一种新的种子处理策略。实验结果表明,当在LFR网络中使用四边形作为主题时,我们提出的策略可以取得比现有方法更好的性能,并且混合参数mu的值超过0.6。

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