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Local Higher-Order Graph Clustering

机译:局部高阶图聚类

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摘要

Local graph clustering methods aim to find a cluster of nodes by exploring a small region of the graph. These methods are attractive because they enable targeted clustering around a given seed node and are faster than traditional global graph clustering methods because their runtime does not depend on the size of the input graph. However, current local graph partitioning methods are not designed to account for the higher-order structures crucial to the network, nor can they effectively handle directed networks. Here we introduce a new class of local graph clustering methods that address these issues by incorporating higher-order network information captured by small subgraphs, also called network motifs. We develop the Motif-based Approximate Personalized PageRank (MAPPR) algorithm that finds clusters containing a seed node with minimal motif conductance, a generalization of the conductance metric for network motifs. We generalize existing theory to prove the fast running time (independent of the size of the graph) and obtain theoretical guarantees on the cluster quality (in terms of motif conductance). We also develop a theory of node neighborhoods for finding sets that have small motif conductance, and apply these results to the case of finding good seed nodes to use as input to the MAPPR algorithm. Experimental validation on community detection tasks in both synthetic and real-world networks, shows that our new framework MAPPR outperforms the current edge-based personalized PageRank methodology.
机译:局部图聚类方法旨在通过探索图的一小部分区域来找到节点簇。这些方法之所以具有吸引力,是因为它们可以在给定的种子节点周围实现目标聚类,并且比传统的全局图聚类方法要快,因为它们的运行时间不取决于输入图的大小。但是,当前的局部图分区方法并非旨在解决对网络至关重要的高阶结构,也无法有效处理定向网络。在这里,我们介绍了一类新的局部图聚类方法,这些方法通过合并由小子图(也称为网络主题)捕获的高阶网络信息来解决这些问题。我们开发了基于Motif的近似个性化PageRank(MAPPR)算法,该算法可找到包含具有最小主题电导率的种子节点的簇,这是网络主题的电导率度量的一般化。我们推广现有理论以证明快速运行时间(与图形大小无关),并获得关于簇质量的理论保证(就基序电导而言)。我们还开发了一种节点邻域理论,以寻找具有较小基序电导的集合,并将这些结果应用于寻找好的种子节点以用作MAPPR算法的输入的情况。对合成网络和现实网络中社区检测任务的实验验证表明,我们的新框架MAPPR优于当前基于边缘的个性化PageRank方法。

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