一种探索多层动态网络的多模态时空建模方法

A multimodal spatiotemporal modeling method for exploring multilayer dynamic networks

IISE Transactions · 2025
被引 1
ABS 3

中文导读

针对多层动态网络的多模态数据,提出融合节点连接和属性数据的时空建模方法,用共享社区的霍克斯过程描述节点交互,并通过数值实验和城市地铁网络案例验证有效性。

Abstract

Multilayer dynamic networks are ubiquitous across various domains, emphasizing the importance of thoroughly elucidating the interactive relationships among their constituent entities. With the progression of data acquisition technologies, multimodal data has been collected for a multilayer network, enabling the depiction of network structural features from various perspectives. Modeling the multilayer network becomes a challenging task due to multivariate spatiotemporal dynamics and diverse characteristics of entities from multimodal variables. This paper develops a novel methodology for multimodal spatiotemporal modeling, tailored for the analysis of a multilayer dynamic network. The network comprises a number of nodes and multiple layers, described through multimodal variables, notably event frequencies and attributes. Assuming all layers share a common community structure, we fuse node connectivity and attribute data within the context of the network’s community via Bernoulli and Poisson distributions. Illuminating node connectivity patterns, we propose a multilayer spatiotemporal Hawkes process with shared community to depict node interactions based on event frequency data. Additionally, we develop a hierarchical Expectation-Maximization (EM) algorithm for parameter estimation, offering theoretical guarantee of local convergence. A comprehensive evaluation is undertaken through numerical experiments and a real case study involving an urban metro network system to validate the effectiveness of the proposed method.

多层网络时空建模多模态数据社区结构城市交通