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Dirichlet Eigenvalues, Local Random Walks, and Analyzing Clusters in Graphs

机译:Dirichlet特征值,局部随机游动和图形中的聚类分析

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A cluster S in a massive graph G is characterised by the property that its corresponding vertices are better connected with each other, in comparison with the other vertices of the graph. Modeling, finding and analyzing clusters in massive graphs is an important topic in various disciplines. In this work we study local random walks that always stay in a cluster S. Moreover, we initiate the study of the local mixing time and the almost stable distribution, by analyzing Dirichlet eigenvalues in graphs. We prove that the Dirichlet eigenvalues of any connected subset S can be used to bound the ε-uniform mixing time, which improves the previous best-known result. We further present two applications of our results. The first is a polynomial-time algorithm for finding clusters with an improved approximation guarantee, while the second is the significance ordering of vertices in a cluster.
机译:块状图G中的簇S的特征在于,与图的其他顶点相比,其对应的顶点彼此更好地连接。在大量图中对集群进行建模,查找和分析是各个学科的重要课题。在这项工作中,我们研究了始终停留在簇S中的局部随机游动。此外,我们通过分析图中的Dirichlet特征值来开始研究局部混合时间和几乎稳定的分布。我们证明,任何连接的子集S的Dirichlet特征值可用于限制ε-均匀混合时间,从而改善了先前最著名的结果。我们进一步介绍了我们的结果的两种应用。第一个是多项式时间算法,用于查找具有改进的近似保证的聚类,而第二个是聚类中顶点的显着性排序。

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