Network structure provides critical information for understanding the dynamic behavior of networks. However, the complete structure of real-world networks is often unavailable, thus it is crucially important to develop approaches to infer a more complete structure of networks. In this paper, we integrate the configuration model for generating random networks into an Expectation-Maximization-Aggregation (EMA) framework to reconstruct the complete structure of multiplex networks. We validate the proposed EMA framework against the random model on several real-world multiplex networks, including both covert and overt ones. It is found that the EMA framework generally achieves the best predictive accuracy compared to the EM framework and the random model. As the number of layers increases, the performance improvement of EMA over EM decreases. The inferred multiplex networks can be leveraged to inform the decision-making on monitoring covert networks as well as allocating limited resources for collecting additional information to improve reconstruction accuracy. For law enforcement agencies, the inferred complete network structure can be used to develop more effective strategies for covert network interdiction.
翻译:网络结构为理解网络的动态行为提供了关键信息,然而,现实世界网络的完整结构往往缺乏,因此,制定方法推断网络结构更完整至关重要。在本文件中,我们将随机网络生成的配置模型纳入一个期望-最大化-聚合框架,以重建多个网络的完整结构。我们对照几个真实世界多维x网络的随机模型,包括隐蔽和公开网络,验证拟议的EMA框架。发现EMA框架与EM框架和随机模型相比,一般都达到最佳的预测准确度。随着层数的增加,EMA的绩效相对于EM的下降。推断的多功能网络可以被用来为监测隐蔽网络的决策提供信息,并分配有限的资源用于收集更多的信息,以提高重建的准确性。对于执法机构来说,推断的完整网络结构可以用来制定更有效的网络阻截战略。