Menichetti Giulia, Remondini Daniel, Panzarasa Pietro, Mondragón Raúl J, Bianconi Ginestra
Department of Physics and Astronomy and INFN Sez. Bologna, Bologna University, Bologna, Italy.
School of Business and Management, Queen Mary University of London, London, United Kingdom.
PLoS One. 2014 Jun 6;9(6):e97857. doi: 10.1371/journal.pone.0097857. eCollection 2014.
One of the most important challenges in network science is to quantify the information encoded in complex network structures. Disentangling randomness from organizational principles is even more demanding when networks have a multiplex nature. Multiplex networks are multilayer systems of [Formula: see text] nodes that can be linked in multiple interacting and co-evolving layers. In these networks, relevant information might not be captured if the single layers were analyzed separately. Here we demonstrate that such partial analysis of layers fails to capture significant correlations between weights and topology of complex multiplex networks. To this end, we study two weighted multiplex co-authorship and citation networks involving the authors included in the American Physical Society. We show that in these networks weights are strongly correlated with multiplex structure, and provide empirical evidence in favor of the advantage of studying weighted measures of multiplex networks, such as multistrength and the inverse multiparticipation ratio. Finally, we introduce a theoretical framework based on the entropy of multiplex ensembles to quantify the information stored in multiplex networks that would remain undetected if the single layers were analyzed in isolation.
网络科学中最重要的挑战之一是量化复杂网络结构中编码的信息。当网络具有多重性质时,将随机性与组织原则区分开来的要求更高。多重网络是具有[公式:见正文]个节点的多层系统,这些节点可以在多个相互作用和共同演化的层中链接。在这些网络中,如果单独分析单层,可能无法捕获相关信息。在这里,我们证明了这种对层的部分分析无法捕获复杂多重网络的权重与拓扑之间的显著相关性。为此,我们研究了两个涉及美国物理学会作者的加权多重共同作者网络和引用网络。我们表明,在这些网络中,权重与多重结构密切相关,并提供了实证证据,支持研究多重网络的加权度量(如多重强度和逆多重参与率)的优势。最后,我们引入了一个基于多重系综熵的理论框架,以量化如果单独分析单层将无法检测到的存储在多重网络中的信息。