Vasilyeva Ekaterina, Romance Miguel, Samoylenko Ivan, Kovalenko Kirill, Musatov Daniil, Raigorodskii Andrey Mihailovich, Boccaletti Stefano
The Phystech School of Applied Mathematics and Computer Science, Moscow Institute of Physics and Technology, Institutskiy per., 9, 141701 Dolgoprudny, Moscow Region, Russia.
P.N. Lebedev Physical Institute of the Russian Academy of Sciences, Leninsky Prosp., 53, 119991 Moscow, Russia.
Entropy (Basel). 2023 Jun 12;25(6):923. doi: 10.3390/e25060923.
We explore the metric structure of networks with higher-order interactions and introduce a novel definition of distance for hypergraphs that extends the classic methods reported in the literature. The new metric incorporates two critical factors: (1) the inter-node distance within each hyperedge, and (2) the distance between hyperedges in the network. As such, it involves the computation of distances in a weighted line graph of the hypergraph. The approach is illustrated with several ad hoc synthetic hypergraphs, where the structural information unveiled by the novel metric is highlighted. Moreover, the method's performance and effectiveness are shown through computations on large real-world hypergraphs, which indeed reveal new insights into the structural features of networks beyond pairwise interactions. Namely, using the new distance measure, we generalize the definitions of efficiency, closeness and betweenness centrality for the case of hypergraphs. Comparing the values of these generalized measures with their analogs calculated for the hypergraph clique projections, we show that our measures provide significantly different assessments on the characteristics (and roles) of the nodes from the information-transferability point of view. The difference is brighter for hypergraphs in which hyperedges of large sizes are frequent, and nodes relating to these hyperedges are rarely connected by other hyperedges of smaller sizes.
我们探索了具有高阶相互作用的网络的度量结构,并为超图引入了一种新的距离定义,该定义扩展了文献中报道的经典方法。新度量包含两个关键因素:(1)每个超边内的节点间距离,以及(2)网络中超边之间的距离。因此,它涉及在超图的加权线图中计算距离。通过几个特殊的合成超图对该方法进行了说明,其中突出了新度量所揭示的结构信息。此外,通过对大型真实世界超图的计算展示了该方法的性能和有效性,这些计算确实揭示了超越成对相互作用的网络结构特征的新见解。具体而言,使用新的距离度量,我们将超图情况下的效率、接近中心性和中介中心性的定义进行了推广。将这些广义度量的值与为超图团投影计算的类似度量的值进行比较,我们表明从信息可传递性的角度来看,我们的度量对节点的特征(和作用)提供了显著不同的评估。对于其中大尺寸超边频繁出现且与这些超边相关的节点很少通过其他小尺寸超边连接的超图,这种差异更为明显。