Clustering assessment in weighted networks

Author:

Arratia Argimiro1,Renedo Mirambell Martí1

Affiliation:

1. Department of Computer Sciences, Polytechnical University of Catalonia, Barcelona, Catalonia, Spain

Abstract

We provide a systematic approach to validate the results of clustering methods on weighted networks, in particular for the cases where the existence of a community structure is unknown. Our validation of clustering comprises a set of criteria for assessing their significance and stability. To test for cluster significance, we introduce a set of community scoring functions adapted to weighted networks, and systematically compare their values to those of a suitable null model. For this we propose a switching model to produce randomized graphs with weighted edges while maintaining the degree distribution constant. To test for cluster stability, we introduce a non parametric bootstrap method combined with similarity metrics derived from information theory and combinatorics. In order to assess the effectiveness of our clustering quality evaluation methods, we test them on synthetically generated weighted networks with a ground truth community structure of varying strength based on the stochastic block model construction. When applying the proposed methods to these synthetic ground truth networks’ clusters, as well as to other weighted networks with known community structure, these correctly identify the best performing algorithms, which suggests their adequacy for cases where the clustering structure is not known. We test our clustering validation methods on a varied collection of well known clustering algorithms applied to the synthetically generated networks and to several real world weighted networks. All our clustering validation methods are implemented in R, and will be released in the upcoming package clustAnalytics.

Funder

MINECO

AGAUR

Publisher

PeerJ

Subject

General Computer Science

Reference43 articles.

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4. The architecture of complex weighted networks;Barrat;Proceedings of the National Academy of Sciences of the United States of America,2004

5. Fast unfolding of communities in large networks;Blondel;Journal of Statistical Mechanics: Theory and Experiment,2008

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