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CONCENTRATION OF RANDOM GRAPHS AND APPLICATION TO COMMUNITY DETECTION

机译:随机图的浓度和社区检测的应用

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Random matrix theory has played an important role in recent work on statistical network analysis. In this paper, we review recent results on regimes of concentration of random graphs around their expectation, showing that dense graphs concentrate and sparse graphs concentrate after regularization. We also review relevant network models that may be of interest to probabilists considering directions for new random matrix theory developments, and random matrix theory tools that may be of interest to statisticians looking to prove properties of network algorithms. Applications of concentration results to the problem of community detection in net-works are discussed in detail.
机译:随机矩阵理论在最近的统计网络分析工作中发挥了重要作用。 在本文中,我们审查了最近的结果对他们期望周围的随机图浓度的结果,表明致密图浓缩和稀疏图在规则化后浓缩。 我们还审查了可能对考虑新的随机矩阵理论开发的方向的概率主义者感兴趣的网络模型,以及可能对寻求证明网络算法属性的统计学家感兴趣的随机矩阵理论工具。 详细讨论了浓度结果对群落作用中群落检测问题的应用。

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