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An efficient block model for clustering sparse graphs*

机译:群集稀疏图形的一个有效的块模型*

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Models for large, sparse graphs are found in many applications and are an active topic in machine learning research. We develop a new generative model that combines rich block structure and simple, efficient estimation by collapsed Gibbs sampling. Novel in our method is that we may learn the strength of assortative and disassortative mixing schemes of communities. Most earlier approaches, both based on low-dimensional projections and Latent Dirichlet Allocation implicitely rely on one of the two assumptions: some algorithms define similarity based solely on connectedness while others solely on the similarity of the neighborhood, leading to undesired results for example in near-bipartite subgraphs. In our experiments we cluster both small and large graphs, involving real and generated graphs that are known to be hard to partition. Our method outperforms earlier Latent Dirichlet Allocation based models as well as spectral heuristics.
机译:在许多应用中发现了大型稀疏图形的模型,并且是机器学习研究中的活动主题。我们开发了一种新的生成模型,将丰富的块结构结合起来,简单,有效地估计倒塌的GIBBS采样。我们的方法中的小说是我们可能会学习各种各样的社区的分类和分解混合计划的实力。基于低维投影和潜在的Dirichlet分配的最早的方法隐含地依赖于两个假设中的一个:一些算法仅基于连接性定义相似度,而其他算法仅在附近的相似性上,导致例如在附近的不期望的结果 - 中普里特的子图。在我们的实验中,我们聚集了小型和大图,涉及已知难以分区的真实和生成的图形。我们的方法优于基于潜在的Dirichlet分配的早期模型以及光谱启发式。

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