Tensor Spectral Clustering for Partitioning Higher-order Network Structures

Austin R. Benson, D. Gleich, J. Leskovec
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引用次数: 108

Abstract

Spectral graph theory-based methods represent an important class of tools for studying the structure of networks. Spectral methods are based on a first-order Markov chain derived from a random walk on the graph and thus they cannot take advantage of important higher-order network substructures such as triangles, cycles, and feed-forward loops. Here we propose a Tensor Spectral Clustering (TSC) algorithm that allows for modeling higher-order network structures in a graph partitioning framework. Our TSC algorithm allows the user to specify which higher-order network structures (cycles, feed-forward loops, etc.) should be preserved by the network clustering. Higher-order network structures of interest are represented using a tensor, which we then partition by developing a multilinear spectral method. Our framework can be applied to discovering layered flows in networks as well as graph anomaly detection, which we illustrate on synthetic networks. In directed networks, a higher-order structure of particular interest is the directed 3-cycle, which captures feedback loops in networks. We demonstrate that our TSC algorithm produces large partitions that cut fewer directed 3-cycles than standard spectral clustering algorithms.
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高阶网络结构的张量谱聚类
基于谱图理论的方法是研究网络结构的一类重要工具。谱方法基于一阶马尔可夫链,该链来源于图上的随机游走,因此它们不能利用重要的高阶网络子结构,如三角形、循环和前馈循环。在这里,我们提出了一个张量谱聚类(TSC)算法,该算法允许在图划分框架中建模高阶网络结构。我们的TSC算法允许用户指定网络聚类应该保留哪些高阶网络结构(循环,前馈循环等)。感兴趣的高阶网络结构使用张量表示,然后我们通过开发多线性谱方法对其进行划分。我们的框架可以应用于发现网络中的分层流以及图异常检测,我们在合成网络上说明了这一点。在有向网络中,一个特别有趣的高阶结构是有向3环,它捕获了网络中的反馈回路。我们证明了我们的TSC算法产生的大分区比标准谱聚类算法切割的有向3周期更少。
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