Reconstruction of multiplex networks with correlated layers
Valerio Gemmetto, Diego Garlaschelli

TL;DR
This paper introduces a novel method for reconstructing correlated multiplex networks, capturing inter-layer dependencies that previous single-layer approaches could not effectively model.
Contribution
It develops a methodology that infers inter-layer dependencies in multiplex networks from marginal properties, improving the accuracy of network reconstruction.
Findings
Successfully reconstructs the World Trade Multiplex with inter-layer correlations.
Introduces minimal dependency structures to replicate higher-order multiplex properties.
Provides a robust measure of inter-layer coupling in multiplex networks.
Abstract
The characterization of various properties of real-world systems requires the knowledge of the underlying network of connections among the system's components. Unfortunately, in many situations the complete topology of this network is empirically inaccessible, and one has to resort to probabilistic techniques to infer it from limited information. While network reconstruction methods have reached some degree of maturity in the case of single-layer networks (where nodes can be connected only by one type of links), the problem is practically unexplored in the case of multiplex networks, where several interdependent layers, each with a different type of links, coexist. Even the most advanced network reconstruction techniques, if applied to each layer separately, fail in replicating the observed inter-layer dependencies making up the whole coupled multiplex. Here we develop a methodology to…
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