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Community Detection and Classification in Hierarchical Stochastic Blockmodels

机译:分层随机块模型中的社区检测和分类

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In disciplines as diverse as social network analysis and neuroscience, many large graphs are believed to be composed of loosely connected smaller graph primitives, whose structure is more amenable to analysis We propose a robust, scalable, integrated methodology for community detection and community comparison in graphs. In our procedure, we first embed a graph into an appropriate Euclidean space to obtain a low-dimensional representation, and then cluster the vertices into communities. We next employ nonparametric graph inference techniques to identify structural similarity among these communities. These two steps are then applied recursively on the communities, allowing us to detect more fine-grained structure. We describe a hierarchical stochastic blockmodel—namely, a stochastic blockmodel with a natural hierarchical structure—and establish conditions under which our algorithm yields consistent estimates of model parameters and motifs, which we define to be stochastically similar groups of subgraphs. Finally, we demonstrate the effectiveness of our algorithm in both simulated and real data. Specifically, we address the problem of locating similar sub-communities in a partially reconstructed Drosophila connectome and in the social network Friendster.
机译:在社会网络分析和神经科学等众多学科中,许多大型图被认为是由松散连接的较小图基元组成的,它们的结构更易于分析。我们提出了一种健壮,可扩展的集成方法,用于图中的社区检测和社区比较。在我们的过程中,我们首先将图嵌入适当的欧几里得空间中以获得低维表示,然后将顶点聚集成社区。接下来,我们采用非参数图推断技术来识别这些社区之间的结构相似性。然后将这两个步骤递归应用于社区,从而使我们能够检测到更细粒度的结构。我们描述了一个层次随机块模型(即具有自然层次结构的随机块模型),并建立了条件,在该条件下我们的算法可以得出模型参数和图案的一致估计,我们将这些参数定义为随机相似的子图组。最后,我们展示了我们的算法在模拟和真实数据中的有效性。具体来说,我们解决了在部分重建的果蝇连接体和社交网络Friendster中定位相似子社区的问题。

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