IEEE Trans Cybern. 2018 Feb;48(2):754-764. doi: 10.1109/TCYB.2017.2655511. Epub 2017 Feb 10.
The coexistence of multiple types of interactions within social, technological, and biological networks has motivated the study of the multilayer nature of real-world networks. Meanwhile, identifying network structures from dynamical observations is an essential issue pervading over the current research on complex networks. This paper addresses the problem of structure identification for multilayer networks, which is an important topic but involves a challenging inverse problem. To clearly reveal the formalism, the simplest two-layer network model is considered and a new approach to identifying the structure of one layer is proposed. Specifically, if the interested layer is sparsely connected and the node behaviors of the other layer are observable at a few time points, then a theoretical framework is established based on compressive sensing and regularization. Some numerical examples illustrate the effectiveness of the identification scheme, its requirement of a relatively small number of observations, as well as its robustness against small noise. It is noteworthy that the framework can be straightforwardly extended to multilayer networks, thus applicable to a variety of real-world complex systems.
多种类型的相互作用在社会、技术和生物网络中共存,这促使人们研究真实网络的多层性质。同时,从动态观测中识别网络结构是当前复杂网络研究中普遍存在的一个重要问题。本文针对多层网络的结构识别问题展开研究,这是一个重要但涉及挑战性反问题的课题。为了清晰地揭示形式,考虑最简单的两层网络模型,并提出一种识别一层结构的新方法。具体来说,如果感兴趣的层是稀疏连接的,并且其他层的节点行为在少数几个时间点可观测,那么基于压缩感知和正则化方法建立一个理论框架。一些数值例子说明了识别方案的有效性、对少量观测的要求以及对小噪声的鲁棒性。值得注意的是,该框架可以直接扩展到多层网络,从而适用于各种真实复杂系统。