Community Detection with Side Information via Semidefinite Programming

Mohammadjafar Esmaeili, H. Saad, Aria Nosratinia
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引用次数: 7

Abstract

Semidefinite programming is known to be both efficient and asymptotically optimal in solving community detection problems, but it has been studied in this context only when observations are purely graphical in nature. In this paper, we extend the use of semidefinite programming in community detection to observations that have both a graphical and a nongraphical component. We consider the binary censored block model with n nodes and study the effect of partially revealed labels on the performance of semidefinite programming. We address the question: do partially revealed labels help the semidefinite programming solution as much as they help the maximum likelihood solutionƒ Our results are twofold. First, we show that partially revealed labels change the phase transition of exact recovery if and only if the information they provide grows no slower than Ω(log(n)). Second, we show that the semidefinite programming relaxation of maximum likelihood can achieve exact recovery down to the optimal threshold under partially revealed labels.
基于半定规划的边信息社区检测
已知半定规划在解决社区检测问题时既有效又渐近最优,但仅在观察纯图形性质时才对其进行了研究。在本文中,我们将半定规划在群体检测中的应用扩展到既有图形成分又有非图形成分的观测值。考虑具有n个节点的二元截尾块模型,研究了部分显示标签对半定规划性能的影响。我们解决了这个问题:部分揭示的标签对半确定规划解决方案的帮助是否与它们对最大似然解决方案的帮助一样多?我们的结果是双重的。首先,我们证明部分揭示的标签改变精确恢复的相变当且仅当它们提供的信息增长不慢于Ω(log(n))。其次,我们证明了最大似然的半定规划松弛可以在部分显示标签下精确恢复到最优阈值。
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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