Exact recovery threshold in the binary censored block model

B. Hajek, Yihong Wu, Jiaming Xu
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引用次数: 15

Abstract

Given a background graph with n vertices, the binary censored block model assumes that vertices are partitioned into two clusters, and every edge is labeled independently at random with labels drawn from Bern(1 - ε) if two endpoints are in the same cluster, or from Bern(ε) otherwise, where ε E [0, 1/2] is a fixed constant. For Erdós-Rényi graphs with edge probability p = a log n/n and fixed a, we show that the semidefinite programming relaxation of the maximum likelihood estimator achieves the optimal threshold a(√1 - ε - √ε)2 > 1 for exactly recovering the partition from the labeled graph with probability tending to one as n oo. For random regular graphs with degree scaling as a log n, we show that the semidefinite programming relaxation also achieves the optimal recovery threshold aD(Bern(1/2)IIBern(ε)) > 1, where D denotes the Kullback-Leibler divergence.
精确恢复阈值在二进制截尾块模型
给定一个有n个顶点的背景图,二元截尾块模型假设顶点被分割成两个聚类,如果两个端点在同一聚类中,则每条边随机独立标记,如果两个端点在同一聚类中,则标记来自Bern(1 - ε),否则标记来自Bern(ε),其中ε E[0,1 /2]是固定常数。对于边概率p = a log n/n且a固定的Erdós-Rényi图,我们证明了极大似然估计器的半定规划松弛达到了从概率趋于1的标记图精确恢复分区的最优阈值a(√1 - ε -√ε)2 > 1。对于度标度为log n的随机正则图,我们证明了半定规划松弛也达到了最优恢复阈值aD(Bern(1/2)IIBern(ε)) > 1,其中D表示Kullback-Leibler散度。
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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