Markov dynamics as a zooming lens for multiscale community detection: non clique-like communities and the field-of-view limit
Michael T. Schaub, Jean-Charles Delvenne, Sophia N. Yaliraki and, Mauricio Barahona

TL;DR
This paper introduces a Markov dynamics-based approach to multiscale community detection, overcoming the limitations of traditional methods that struggle with non clique-like communities and the inherent field-of-view constraint.
Contribution
It presents a dynamical perspective on community detection that allows identifying communities at all scales, including long-range, non clique-like structures, without imposing an upper detection scale.
Findings
Long-range communities are often missed by traditional methods.
Markov dynamics enable multiscale community detection.
Standard benchmarks may not reflect real network structures.
Abstract
In recent years, there has been a surge of interest in community detection algorithms for complex networks. A variety of computational heuristics, some with a long history, have been proposed for the identification of communities or, alternatively, of good graph partitions. In most cases, the algorithms maximize a particular objective function, thereby finding the `right' split into communities. Although a thorough comparison of algorithms is still lacking, there has been an effort to design benchmarks, i.e., random graph models with known community structure against which algorithms can be evaluated. However, popular community detection methods and benchmarks normally assume an implicit notion of community based on clique-like subgraphs, a form of community structure that is not always characteristic of real networks. Specifically, networks that emerge from geometric constraints can…
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