Title of article :
Enhanced MCL Clustering
Author/Authors :
Hashem, Kadhem Mahdi University of Thi Qar - College of Education - Dept of computer science, Iraq , Hani, Mouiad Abid Thi-Qar University - Education College - Computer Science Dept, Iraq
Abstract :
The goal of graph clustering is to partition vertices in a large graph into different clusters based on various criteria such as vertex connectivity or neighborhood similarity. Graph clustering techniques are very useful for detecting densely connected groups in a large graph. In this research, we introduce a clustering algorithm for graphs; this algorithm is based on Markov clustering (MCL), which is a clustering method that uses a simulation of stochastic flow. We have tuned to set the proper factors of inflation, matrix and threshold. Theoretical analysis is provided to show that the enhanced EMCL-Cluster is converging. Then the proposed method is compared with other clustering methods
Keywords :
Markov clustering (MCL) , Markov Chain Model (MCM) , Repeated Random Walks (RRW) , Graph Clustering (GC).
Journal title :
Journal of Thi-Qar Science
Journal title :
Journal of Thi-Qar Science