Exact Recovery in the Balanced Stochastic Block Model with Side Information

Jin Sima, Feng Zhao, Shao-Lun Huang
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引用次数: 1

Abstract

The role that side information plays in improving the exact recovery threshold in the stochastic block model (SBM) has been studied in many aspects. This paper studies exact recovery in n node balanced binary symmetric SBM with side information, given in the form of $O(\log n)$ i.i.d. samples at each node. A sharp exact recovery threshold is obtained and turns out to coincide with an existing threshold result, where no balanced constraint is imposed. Our main contribution is an efficient semi-definite programming (SDP) algorithm that achieves the optimal exact recovery threshold. Compared to the existing works on SDP algorithm for SBM with constant number of samples as side information, the challenge in this paper is to deal with the number of samples increasing in n.
带侧信息的平衡随机块模型的精确恢复
侧边信息在提高随机块模型精确恢复阈值中的作用已得到了多方面的研究。本文研究了带边信息的n节点平衡二元对称SBM的精确恢复,边信息在每个节点上以$O(\log n)$ i.i.d.样本的形式给出。在没有施加平衡约束的情况下,获得了一个精确的恢复阈值,结果与现有的阈值结果一致。我们的主要贡献是一种有效的半确定规划(SDP)算法,该算法可以实现最优的精确恢复阈值。与现有的以恒定样本数作为边信息的SBM的SDP算法相比,本文的挑战在于如何处理以n为单位增加的样本数。
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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