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A semidefinite program for unbalanced multisection in the stochastic block model

机译:随机块模型中不平衡多分辨率的半纤维化程序

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We propose a semidefinite programming (SDP) algorithm for community detection in the stochastic block model, a popular model for networks with latent community structure. We prove that our algorithm achieves exact recovery of the latent communities, up to the information-theoretic limits determined by Abbe and Sandon. Our result extends prior SDP approaches by allowing for many communities of different sizes. By virtue of a semidefinite approach, our algorithms succeed against a semirandom variant of the stochastic block model, guaranteeing a form of robustness and generalization. We further explore how semirandom models can lend insight into both the strengths and limitations of SDPs in this setting.
机译:我们提出了一种用于在随机块模型中进行社区检测的半纤维编程(SDP)算法,是具有潜在社区结构的网络流行模型。我们证明我们的算法实现了潜在社区的精确恢复,达到了由Abbe和Sandon确定的信息 - 理论限制。我们的结果通过允许不同大小的许多社区扩展了先前的SDP方法。借助于半纤维方法,我们的算法成功地反对随机块模型的Semirandom变体,保证了一种鲁棒性和泛化的形式。我们进一步探索Semirandom模型如何在此设置中介绍SDP的优势和局限性。

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