Deep Learning Super-Diffusion in Multiplex Networks
November 09, 2018 Β· Declared Dead Β· π Journal of Physics: Complexity
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Authors
Vito M. Leli, Saeed Osat, Timur Tlyachev, Dmitry V. Dylov, Jacob D. Biamonte
arXiv ID
1811.04104
Category
physics.soc-ph
Cross-listed
cs.LG,
cs.SI
Citations
4
Venue
Journal of Physics: Complexity
Last Checked
4 months ago
Abstract
Complex network theory has shown success in understanding the emergent and collective behavior of complex systems [1]. Many real-world complex systems were recently discovered to be more accurately modeled as multiplex networks [2-6]---in which each interaction type is mapped to its own network layer; e.g.~multi-layer transportation networks, coupled social networks, metabolic and regulatory networks, etc. A salient physical phenomena emerging from multiplexity is super-diffusion: exhibited by an accelerated diffusion admitted by the multi-layer structure as compared to any single layer. Theoretically super-diffusion was only known to be predicted using the spectral gap of the full Laplacian of a multiplex network and its interacting layers. Here we turn to machine learning which has developed techniques to recognize, classify, and characterize complex sets of data. We show that modern machine learning architectures, such as fully connected and convolutional neural networks, can classify and predict the presence of super-diffusion in multiplex networks with 94.12\% accuracy. Such predictions can be done {\it in situ}, without the need to determine spectral properties of a network.
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