Statistically validated networks in bipartite complex systems
Michele Tumminello, Salvatore Miccich\`e, Fabrizio Lillo, Jyrki Piilo,, and Rosario N. Mantegna

TL;DR
This paper introduces an unsupervised statistical validation method for bipartite networks that effectively identifies meaningful relationships, clusters, and classifications across diverse complex systems despite heterogeneity.
Contribution
The authors present a novel null hypothesis-based approach to validate links in bipartite network projections, accounting for system heterogeneity and revealing significant structural features.
Findings
Successfully applied to genomic, financial, and movie datasets
Detects meaningful preferential relationships between elements
Highlights the clustered structure and classifies links based on statistical validation
Abstract
Many complex systems present an intrinsic bipartite nature and are often described and modeled in terms of networks [1-5]. Examples include movies and actors [1, 2, 4], authors and scientific papers [6-9], email accounts and emails [10], plants and animals that pollinate them [11, 12]. Bipartite networks are often very heterogeneous in the number of relationships that the elements of one set establish with the elements of the other set. When one constructs a projected network with nodes from only one set, the system heterogeneity makes it very difficult to identify preferential links between the elements. Here we introduce an unsupervised method to statistically validate each link of the projected network against a null hypothesis taking into account the heterogeneity of the system. We apply our method to three different systems, namely the set of clusters of orthologous genes (COG) in…
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