This paper considers a joint multi-graph inference and clustering problem for simultaneous inference of node centrality and association of graph signals with their graphs. We study a mixture model of filtered low pass graph signals with possibly non-white and low-rank excitation. While the mixture model is motivated from practical scenarios, it presents significant challenges to prior graph learning methods. As a remedy, we consider an inference problem focusing on the node centrality of graphs. We design an expectation-maximization (EM) algorithm with a unique low-rank plus sparse prior derived from low pass signal property. We propose a novel online EM algorithm for inference from streaming data. As an example, we extend the online algorithm to detect if the signals are generated from an abnormal graph. We show that the proposed algorithms converge to a stationary point of the maximum-a-posterior (MAP) problem. Numerical experiments support our analysis.
翻译:本文审议了同时推断节点中心点和将图形信号与其图形相联的多参数联合推断和组群问题。 我们研究了过滤过的低传记信号的混合模型,该模型可能是非白色和低级的刺激。 虽然混合模型的动机来自实际假设,但对先前的图表学习方法提出了重大挑战。 作为补救,我们考虑了侧重于图表节点的推论问题。我们设计了预期-最大值算法,其前一阶段从低传感信号属性中得出独特的低级加稀释值。我们提出了一个新的在线EM算法,用于从流出数据中推断。举例来说,我们扩展了在线算法,以检测信号是否来自异常图。我们展示了拟议的算法与最大内部(MAP)问题的固定点汇合。数字实验支持我们的分析。