| Literature DB >> 28526822 |
Saeed Ghariblou1,2, Mostafa Salehi3,4, Matteo Magnani5, Mahdi Jalili6.
Abstract
The shortest path problem is one of the most fundamental networks optimization problems. Nowadays, individuals interact in extraordinarily numerous ways through their offline and online life (e.g., co-authorship, co-workership, or retweet relation in Twitter). These interactions have two key features. First, they have a heterogeneous nature, and second, they have different strengths that are weighted based on their degree of intimacy, trustworthiness, service exchange or influence among individuals. These networks are known as multiplex networks. To our knowledge, none of the previous shortest path definitions on social interactions have properly reflected these features. In this work, we introduce a new distance measure in multiplex networks based on the concept of Pareto efficiency taking both heterogeneity and weighted nature of relations into account. We then model the problem of finding the whole set of paths as a form of multiple objective decision making and propose an exact algorithm for that. The method is evaluated on five real-world datasets to test the impact of considering weights and multiplexity in the resulting shortest paths. As an application to find the most influential nodes, we redefine the concept of betweenness centrality based on the proposed shortest paths and evaluate it on a real-world dataset from two-layer trade relation among countries between years 2000 and 2015.Entities:
Year: 2017 PMID: 28526822 PMCID: PMC5438413 DOI: 10.1038/s41598-017-01655-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Characteristics of influential Pareto paths. (a) Representation of the network interdependence parameter for influential Pareto paths in five datasets. (b) Representation of the average number of inter-layer switches. (c) The fraction of participation of each layer in the influential Pareto paths. (d) Representation of the domination percentage of influential Pareto paths by the paths with minimum number of links traversed in each layer, for each pair of nodes for four datasets; and the total domination percentage of influential Pareto paths. The white points show that there are no paths between two pairs of nodes.
Figure 2Representation of multiplex influential betweenness centrality for every node in Trade dataset. The bars show the percentage of multiplex influential betweenness centrality of 30 countries for four years. The countries are listed based on their GDP values in 2015 from left to right.
Figure 3Percentage of multiplex influential betweenness centrality, by country (2000–2015).
Figure 4Different phases of our proposed method in order to find influential Pareto path set in weighted multiplex networks.
Figure 5Construction of graph for the two-layer weighted multiplex network. is a two-layer multiplex network with influence on each link. is the graph constructed by changing the influence of each link based on in order to transform the problem onto the problem of minimization of additive weights. is the multiplex network with multiple weights on each link constructed from .