Semidefinite programming is an important tool to tackle several problems in data science and signal processing, including clustering and community detection. However, semidefinite programs are often slow in practice, so speed up techniques such as sketching are often considered. In the context of community detection in the stochastic block model, Mixon and Xie [9] have recently proposed a sketching framework in which a semidefinite program is solved only on a subsampled subgraph of the network, giving rise to significant computational savings. In this short paper, we provide a positive answer to a conjecture of Mixon and Xie about the statistical limits of this technique for the stochastic block model with two balanced communities.
翻译:半无限期编程是解决数据科学和信号处理,包括集群和社区探测等若干问题的重要工具,然而,半无限期程序在实践中往往进展缓慢,因此常常考虑加快草图等技术。在社区在随机区块模型中的探测方面,Mixon 和 Xie [9] 最近提出了一个草图框架,其中半无限期程序只能通过网络的子抽样子集来解决,从而节省了大量计算费用。在这份简短的论文中,我们对Mixon和Xie关于该技术在两个均衡社区中对随机区块模型的统计限制的预测给出了积极的答案。