On model selection for dense stochastic block models

Pub Date : 2022-01-14 DOI:10.1017/apr.2021.29
I. Norros, H. Reittu, F. Bazsó
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引用次数: 1

Abstract

Abstract This paper studies estimation of stochastic block models with Rissanen’s minimum description length (MDL) principle in the dense graph asymptotics. We focus on the problem of model specification, i.e., identification of the number of blocks. Refinements of the true partition always decrease the code part corresponding to the edge placement, and thus a respective increase of the code part specifying the model should overweight that gain in order to yield a minimum at the true partition. The balance between these effects turns out to be delicate. We show that the MDL principle identifies the true partition among models whose relative block sizes are bounded away from zero. The results are extended to models with Poisson-distributed edge weights.
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密集随机块模型的模型选择
摘要本文研究了稠密图渐近中随机块模型的Rissanen最小描述长度(MDL)估计问题。我们专注于模型规范的问题,即块数量的识别。真实分区的细化总是减少与边缘放置相对应的代码部分,因此指定模型的代码部分的相应增加应该使该增益超重,以便在真实分区处产生最小值。这些影响之间的平衡是微妙的。我们证明了MDL原理在相对块大小有界于零的模型之间识别真正的分区。将结果推广到具有泊松分布边权的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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