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Equivalence between modularity optimization and maximum likelihood methods for community detection

机译:社区检测的模块化优化和最大似然方法之间的对等

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摘要

We demonstrate an equivalence between two widely used methods of community detection in networks, the method of modularity maximization and the method of maximum likelihood applied to the degree-corrected stochastic block model. Specifically, we show an exact equivalence between maximization of the generalized modularity that includes a resolution parameter and the special case of the block model known as the planted partition model, in which all communities in a network are assumed to have statistically similar properties. Among other things, this equivalence provides a mathematically principled derivation of the modularity function, clarifies the conditions and assumptions of its use, and gives an explicit formula for the optimal value of the resolution parameter.
机译:我们证明了网络中两种广泛使用的社区检测方法,模块性最大化方法和应用于似然校正随机块模型的最大似然方法之间的等效性。具体来说,我们显示了包括分辨率参数在内的广义模块化最大化与已知为种植分区模型的块模型的特殊情况之间的精确等价关系,在该情况下,网络中的所有社区都被认为具有统计上相似的属性。除其他外,这种等效性提供了模块化函数的数学原理推导,阐明了其使用条件和假设,并为分辨率参数的最佳值给出了明确的公式。

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