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Stochastic blockmodel approximation of a graphon: Theory and consistent estimation

机译:石墨烯的随机块模型近似:理论和一致估计

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Non-parametric approaches for analyzing network data based on exchangeable graph models (ExGM) have recently gained interest. The key object that defines an ExGM is often referred to as a graphon. This non-parametric perspective on network modeling poses challenging questions on how to make inference on the graphon underlying observed network data. In this paper, we propose a computationally efficient procedure to estimate a graphon from a set of observed networks generated from it. This procedure is based on a stochastic blockmodel approximation (SBA) of the graphon. We show that, by approximating the graphon with a stochastic block model, the graphon can be consistently estimated, that is, the estimation error vanishes as the size of the graph approaches infinity.
机译:基于可交换图形模型(ExGM)的用于分析网络数据的非参数方法近来引起了人们的兴趣。定义一个ExGM的关键对象通常被称为一个Graphon。关于网络建模的这种非参数观点提出了关于如何推断所观察到的网络数据所依据的图形的极富挑战性的问题。在本文中,我们提出了一种计算有效的过程,可以从一组由此产生的观察网络中估计一个石墨烯。该过程基于石墨烯的随机块模型近似(SBA)。我们表明,通过用随机块模型逼近石墨烯,可以一致地估计该石墨烯,即,随着图形的尺寸接近无穷大,估计误差将消失。

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