Back to Search Start Over

A Novel Algorithm for Community Detection in Networks using Rough Sets and Consensus Clustering

Authors :
Grass-Boada, Darian H.
González-Montesino, Leandro
Armañanzas, Rubén
Publication Year :
2024

Abstract

Complex networks, such as those in social, biological, and technological systems, often present challenges to the task of community detection. Our research introduces a novel rough clustering based consensus community framework (RC-CCD) for effective structure identification of network communities. The RC-CCD method employs rough set theory to handle uncertainties within data and utilizes a consensus clustering approach to aggregate multiple clustering results, enhancing the reliability and accuracy of community detection. This integration allows the RC-CCD to effectively manage overlapping communities, which are often present in complex networks. This approach excels at detecting overlapping communities, offering a detailed and accurate representation of network structures. Comprehensive testing on benchmark networks generated by the Lancichinetti-Fortunato-Radicchi method showcased the strength and adaptability of the new proposal to varying node degrees and community sizes. Cross-comparisons of RC-CCD versus other well known detection algorithms outcomes highlighted its stability and adaptability.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.12412
Document Type :
Working Paper