Closed benchmarks for network community structure characterization
Rodrigo Aldecoa, Ignacio Mar\'in

TL;DR
This paper introduces 'closed' benchmarks for network community structure analysis, enabling precise monitoring of community evolution and providing a standard for comparing detection algorithms.
Contribution
The authors propose a novel 'closed' benchmark method that tracks community changes and predicts optimal partitions, improving evaluation of community detection algorithms.
Findings
Allows monitoring of community structure transformation.
Predicts optimal variation of information during network evolution.
Enables comprehensive comparison of different algorithms.
Abstract
Characterizing the community structure of complex networks is a key challenge in many scientific fields. Very diverse algorithms and methods have been proposed to this end, many working reasonably well in specific situations. However, no consensus has emerged on which of these methods is the best to use in practice. In part, this is due to the fact that testing their performance requires the generation of a comprehensive, standard set of synthetic benchmarks, a goal not yet fully achieved. Here, we present a type of benchmark that we call "closed", in which an initial network of known community structure is progressively converted into a second network whose communities are also known. This approach differs from all previously published ones, in which networks evolve toward randomness. The use of this type of benchmark allows us to monitor the transformation of the community structure…
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