Finding communities in networks is a problem that remains difficult, in spite of the amount of attention it has recently received. The Stochastic Block-Model (SBM) is a generative model for graphs with "communities" for which, because of its simplicity, the theoretical understanding has advanced fast in recent years. In particular, there have been various results showing that simple versions of spectral clustering using the Normalized Laplacian of the graph can recover the communities almost perfectly with high probability. Here we show that essentially the same algorithm used for the SBM and for its extension called Degree-Corrected SBM, works on a wider class of Block-Models, which we call Preference Frame Models, with essentially the same guarantees. Moreover, the parametrization we introduce clearly exhibits the free parameters needed to specify this class of models, and results in bounds that expose with more clarity the parameters that control the recovery error in this model class.
翻译:在网络中寻找社区是一个仍然困难的问题,尽管它最近受到了大量的关注。Stochastic Bluc-Model(SBM)是带有“共度”的图形的基因模型,由于它的简单性,理论理解近年来进展很快。特别是,有各种结果显示,使用图的普通拉普拉西亚光谱集的简单版本能够以很高的概率完全恢复社区。我们在这里显示,基本上与用于SBM及其扩展的称为度校正的SBM所使用的算法一样,它是一个更宽的块模框架模型,我们称之为“首选框架模型模型 ”, 基本上有同样的保证。 此外,我们引入的参数清楚地展示了指定这一类模型所需的自由参数,并导致更加清晰地暴露了控制该模型类中回收错误的参数。