The paper considers a Mixture Multilayer Stochastic Block Model (MMLSBM), where layers can be partitioned into groups of similar networks, and networks in each group are equipped with a distinct Stochastic Block Model. The goal is to partition the multilayer network into clusters of similar layers, and to identify communities in those layers. Jing et al. (2020) introduced the MMLSBM and developed a clustering methodology, TWIST, based on regularized tensor decomposition. The present paper proposes a different technique, an alternating minimization algorithm (ALMA), that aims at simultaneous recovery of the layer partition, together with estimation of the matrices of connection probabilities of the distinct layers. Compared to TWIST, ALMA achieves higher accuracy both theoretically and numerically.
翻译:文件考虑了混合多层碎块模型(MMLSBM),该模型可以将各层分割成类似网络的组合,各组的网络配备了不同的碎块模型,目的是将多层网络分割成类似层的集群,并查明这些层的群落。Jing等人(202020年)引入了MMLSBM,并开发了基于常规化高压分解的集群方法TWIST。本文件提出了一种不同的技术,即交替最小化算法(ALMA),目的是同时恢复层分隔,同时估计不同层的连接概率矩阵。与TWIST相比,ALMA在理论上和数字上都实现了更高的精确度。