加权随机块模型中的群落恢复

Varun Jog, Po-Ling Loh
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引用次数: 11

摘要

我们在加权随机块模型中获得精确恢复群落的尖锐阈值,其中以加权邻接矩阵的形式收集观测值,并且每个边的权重独立于由其端点的群落成员决定的分布生成。我们的主要结果,描述了当从离散分布中提取边权时,最大似然估计的成功与失败之间的精确边界,涉及到群落内和群落间边分布之间的1/2阶Renyi散度。当Renyi散度超过一定阈值时,即边缘分布充分分离,最大似然成功,概率趋于1;当Renyi散度低于阈值时,最大似然失效,概率有界远离0。在图形信道的语言中,Renyi散度指出了具有二进制输入的离散图形信道的信息论容量。我们的结果推广了先前建立的专门针对未加权块模型的阈值,并支持了一个重要的自然直觉,即社区估计的内在硬度与边缘分类问题有关。在此过程中,我们建立了Renyi散度与任意边权分布的最大似然估计器成功概率之间的一般关系。最后,我们讨论了我们的边界对截尾块模型和子矩阵定位相关问题的结果,这些问题可以被视为我们论文中开发的框架的特殊情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recovering communities in weighted stochastic block models
We derive sharp thresholds for exact recovery of communities in a weighted stochastic block model, where observations are collected in the form of a weighted adjacency matrix, and the weight of each edge is generated independently from a distribution determined by the community membership of its endpoints. Our main result, characterizing the precise boundary between success and failure of maximum likelihood estimation when edge weights are drawn from discrete distributions, involves the Renyi divergence of order 1/2 between the distributions of within-community and between-community edges. When the Renyi divergence is above a certain threshold, meaning the edge distributions are sufficiently separated, maximum likelihood succeeds with probability tending to 1; when the Renyi divergence is below the threshold, maximum likelihood fails with probability bounded away from 0. In the language of graphical channels, the Renyi divergence pinpoints the information-theoretic capacity of discrete graphical channels with binary inputs. Our results generalize previously established thresholds derived specifically for unweighted block models, and support an important natural intuition relating the intrinsic hardness of community estimation to the problem of edge classification. Along the way, we establish a general relationship between the Renyi divergence and the probability of success of the maximum likelihood estimator for arbitrary edge weight distributions. Finally, we discuss consequences of our bounds for the related problems of censored block models and submatrix localization, which may be seen as special cases of the framework developed in our paper.
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