Exact Recovery of Two-Latent Variable Stochastic Block Model with Side Information

M. Shahiri, Mahdi Eskandari
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Abstract

The two-latent variable stochastic block model is a new graph synthetic model making a connection between the conventional stochastic block model and real-world networks. In this model, each node contains two latent variables such that at least one of these two latent variables is unknown. Still, this model lonely is not able to model a real-world network. Side information is another component that sometimes exists beside a real-world network. In this paper, we will investigate the asymptotic behavior of the two-latent variable stochastic block model in the presence of side information. Two different types of side information are considered in this paper: noisy labels and partially revealed labels side information. For each case, the necessary and sufficient conditions for the exact recovery of the desired latent variable are obtained via semidefinite programming optimization. It is shown that these conditions are tight and create a phase transition for the exact recovery.
带侧信息的双潜变量随机块模型的精确恢复
双潜变量随机块模型是将传统的随机块模型与现实网络联系起来的一种新的图合成模型。在该模型中,每个节点包含两个潜在变量,使得这两个潜在变量中至少有一个是未知的。不过,这个模型还不能模拟真实世界的网络。副信息是另一个组件,有时存在于现实世界的网络旁边。在本文中,我们将研究双潜变量随机块模型在侧信息存在下的渐近行为。本文考虑了两种不同类型的侧信息:噪声标签和部分揭示标签侧信息。对于每种情况,通过半定规划优化得到了期望潜变量精确恢复的充分必要条件。结果表明,这些条件是严格的,并为精确的恢复创造了一个相变。
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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