English

Multimodal Clustering for Community Detection

Social and Information Networks 2017-03-01 v1 Discrete Mathematics Machine Learning

Abstract

Multimodal clustering is an unsupervised technique for mining interesting patterns in nn-adic binary relations or nn-mode networks. Among different types of such generalized patterns one can find biclusters and formal concepts (maximal bicliques) for 2-mode case, triclusters and triconcepts for 3-mode case, closed nn-sets for nn-mode case, etc. Object-attribute biclustering (OA-biclustering) for mining large binary datatables (formal contexts or 2-mode networks) arose by the end of the last decade due to intractability of computation problems related to formal concepts; this type of patterns was proposed as a meaningful and scalable approximation of formal concepts. In this paper, our aim is to present recent advance in OA-biclustering and its extensions to mining multi-mode communities in SNA setting. We also discuss connection between clustering coefficients known in SNA community for 1-mode and 2-mode networks and OA-bicluster density, the main quality measure of an OA-bicluster. Our experiments with 2-, 3-, and 4-mode large real-world networks show that this type of patterns is suitable for community detection in multi-mode cases within reasonable time even though the number of corresponding nn-cliques is still unknown due to computation difficulties. An interpretation of OA-biclusters for 1-mode networks is provided as well.

Keywords

Cite

@article{arxiv.1702.08557,
  title  = {Multimodal Clustering for Community Detection},
  author = {Dmitry I. Ignatov and Alexander Semenov and Daria Komissarova and Dmitry V. Gnatyshak},
  journal= {arXiv preprint arXiv:1702.08557},
  year   = {2017}
}
R2 v1 2026-06-22T18:30:09.760Z