Inferring monopartite projections of bipartite networks: an entropy-based approach
Fabio Saracco, Mika J. Straka, Riccardo Di Clemente, Andrea Gabrielli,, Guido Caldarelli, Tiziano Squartini

TL;DR
This paper introduces an entropy-based algorithm for statistically validating bipartite network projections, effectively revealing meaningful communities in diverse real-world systems like trade and social networks.
Contribution
It proposes a novel method for bipartite projection validation using null models and multiple hypothesis testing, enhancing community detection accuracy.
Findings
Detected communities of industrialized nations and product complexity in trade networks.
Identified movie clusters beyond genre similarity in social networks.
Validated projections reveal non-trivial community structures.
Abstract
Bipartite networks are currently regarded as providing a major insight into the organization of many real-world systems, unveiling the mechanisms driving the interactions occurring between distinct groups of nodes. One of the most important issues encountered when modeling bipartite networks is devising a way to obtain a (monopartite) projection on the layer of interest, which preserves as much as possible the information encoded into the original bipartite structure. In the present paper we propose an algorithm to obtain statistically-validated projections of bipartite networks, according to which any two nodes sharing a statistically-significant number of neighbors are linked. Since assessing the statistical significance of nodes similarity requires a proper statistical benchmark, here we consider a set of four null models, defined within the exponential random graph framework. Our…
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Taxonomy
TopicsComplex Network Analysis Techniques · Economic and Technological Innovation · Computational Drug Discovery Methods
