Local phase transitions in a model of multiplex networks with heterogeneous degrees and inter-layer coupling
Nedim Bayrakdar, Valerio Gemmetto, Diego Garlaschelli

TL;DR
This paper introduces a maximum-entropy model for multiplex networks with heterogeneous degrees and inter-layer coupling, revealing how local phase transitions influence overlap and disentangle true correlations from spurious ones.
Contribution
It develops a rigorous, unbiased model that captures local phase transitions in multiplex networks, allowing for quantification of true versus spurious overlaps.
Findings
Heterogeneity causes different critical points for node pairs.
Local phase transitions can increase network overlap.
Empirical trade data requires non-zero inter-layer coupling.
Abstract
Multilayer networks represent multiple types of connections between the same set of nodes. Clearly, a multilayer description of a system adds value only if the multiplex does not merely consist of independent layers, i.e. if the inter-layer overlap is nontrivial. On real-world multiplexes, it is expected that the observed overlap may partly result from spurious correlations arising from the heterogeneity of nodes and partly from true interdependencies. However, no rigorous way to disentangle these two effects has been developed. In this paper we introduce an unbiased maximum-entropy model of multiplexes with controllable node degrees and controllable overlap. The model can be mapped to a generalized Ising model where the combination of node heterogeneity and inter-layer coupling leads to the possibility of local phase transitions. In particular, we find that an increased heterogeneity…
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