| Literature DB >> 29854407 |
Asma Azizi1, Jeremy Dewar1, Tong Wu2, James M Hyman1.
Abstract
We describe a class of new algorithms to construct bipartite networks that preserves a prescribed degree and joint-degree (degree-degree) distribution of the nodes. Bipartite networks are graphs that can represent real-world interactions between two disjoint sets, such as actor-movie networks, author-article networks, co-occurrence networks, and heterosexual partnership networks. Often there is a strong correlation between the degree of a node and the degrees of the neighbors of that node that must be preserved when generating a network that reflects the structure of the underling system. Our bipartite 2K (B2K) algorithms generate an ensemble of networks that preserve prescribed degree sequences for the two disjoint set of nodes in the bipartite network, and the joint-degree distribution that is the distribution of the degrees of all neighbors of nodes with the same degree. We illustrate the effectiveness of the algorithms on a romance network using the NetworkX software environment to compare other properties of a target network that are not directly enforced by the B2K algorithms. We observe that when average degree of nodes is low, as is the case for romance and heterosexual partnership networks, then the B2K networks tend to preserve additional properties, such as the cluster coefficients, than algorithms that do not preserve the joint-degree distribution of the original network.Entities:
Keywords: 2K algorithm; 34K30; 35K57; 35Q80; 92D25; B2K algorithm; BJD matrix; Bipartite random network; JDM matrix; Joint-degree distribution; dk network generation algorithm
Year: 2017 PMID: 29854407 PMCID: PMC5972839 DOI: 10.1093/comnet/cnx014
Source DB: PubMed Journal: J Complex Netw ISSN: 2051-1310