Variational kinetic clustering of complex networks

Author:

Koskin Vladimir12,Kells Adam1ORCID,Clayton Joe2,Hartmann Alexander K.3ORCID,Annibale Alessia4ORCID,Rosta Edina2ORCID

Affiliation:

1. Department of Chemistry, King’s College London, SE1 1DB London, United Kingdom

2. Department of Physics and Astronomy, University College London, WC1E 6BT London, United Kingdom

3. Institute of Physics, University of Oldenburg, Oldenburg, Germany

4. Department of Mathematics, King’s College London, SE11 6NJ London, United Kingdom

Abstract

Efficiently identifying the most important communities and key transition nodes in weighted and unweighted networks is a prevalent problem in a wide range of disciplines. Here, we focus on the optimal clustering using variational kinetic parameters, linked to Markov processes defined on the underlying networks, namely, the slowest relaxation time and the Kemeny constant. We derive novel relations in terms of mean first passage times for optimizing clustering via the Kemeny constant and show that the optimal clustering boundaries have equal round-trip times to the clusters they separate. We also propose an efficient method that first projects the network nodes onto a 1D reaction coordinate and subsequently performs a variational boundary search using a parallel tempering algorithm, where the variational kinetic parameters act as an energy function to be extremized. We find that maximization of the Kemeny constant is effective in detecting communities, while the slowest relaxation time allows for detection of transition nodes. We demonstrate the validity of our method on several test systems, including synthetic networks generated from the stochastic block model and real world networks (Santa Fe Institute collaboration network, a network of co-purchased political books, and a street network of multiple cities in Luxembourg). Our approach is compared with existing clustering algorithms based on modularity and the robust Perron cluster analysis, and the identified transition nodes are compared with different notions of node centrality.

Funder

European Commission

Engineering and Physical Sciences Research Council

Publisher

AIP Publishing

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy

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