论文标题

多频联合社区检测和相同步

Multi-Frequency Joint Community Detection and Phase Synchronization

论文作者

Wang, Lingda, Zhao, Zhizhen

论文摘要

本文研究了\ textIt {随机块模型的联合群落检测和相位同步问题,其中每个节点都与未知相角相关联。这个问题涉及各种现实世界应用,旨在同时恢复群集结构和相关的相角。我们通过密切检查其最大似然估计(MLE)公式表明了这个问题{``多频率''}结构,而现有方法并非从这个角度来源。为此,提出了两种利用MLE公式并受益于多个频率的信息的简单而有效的算法。前者是基于新型多频柱旋转QR分解的光谱方法。应用于观察矩阵的顶部特征向量的分解化提供了有关群集结构和相关相角的关键信息。第二种方法是一种迭代多频通用方法,其中每次迭代以矩阵 - 反密度的方式更新估计,然后进行投票方式。数值实验表明,与最新的算法相比,我们提出的算法可以显着提高精确恢复群集结构和估计相角的准确性的能力。

This paper studies the joint community detection and phase synchronization problem on the \textit{stochastic block model with relative phase}, where each node is associated with an unknown phase angle. This problem, with a variety of real-world applications, aims to recover the cluster structure and associated phase angles simultaneously. We show this problem exhibits a \textit{``multi-frequency''} structure by closely examining its maximum likelihood estimation (MLE) formulation, whereas existing methods are not originated from this perspective. To this end, two simple yet efficient algorithms that leverage the MLE formulation and benefit from the information across multiple frequencies are proposed. The former is a spectral method based on the novel multi-frequency column-pivoted QR factorization. The factorization applied to the top eigenvectors of the observation matrix provides key information about the cluster structure and associated phase angles. The second approach is an iterative multi-frequency generalized power method, where each iteration updates the estimation in a matrix-multiplication-then-projection manner. Numerical experiments show that our proposed algorithms significantly improve the ability of exactly recovering the cluster structure and the accuracy of the estimated phase angles, compared to state-of-the-art algorithms.

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