Author/Authors :
Ghayekhloo, M Qazvin Branch - Islamic Azad University, Qazvin , Menhaj, M. B Dept. of Electrical Engineering - Amirkabir University of Technology, Tehran , Azimi, R Qazvin Branch - Islamic Azad University, Qazvin , Shekari, E Dept. of Decision Science and Knowledge Engineering - University of Economic Sciences, Tehran
Abstract :
Identifying clusters is an important aspect of data analysis. This paper proposes a novel
data clustering algorithm to increase the clustering accuracy. A novel game theoretic self-organizing
map (NGTSOM ) and neural gas (NG) are used in combination with Competitive Hebbian Learning
(CHL) to improve the quality of the map and provide a better vector quantization (VQ) for clustering
data. Different strategies of Game Theory are proposed to provide a competitive game for nonwinning
neurons to participate in the learning phase and obtain more input patterns. The performance
of the proposed clustering analysis is evaluated and compared with that of the K-means, SOM and
NG methods using different types of data. The clustering results of the proposed method and existing
state-of-the-art clustering methods are also compared which demonstrates a better accuracy of the
proposed clustering method.
Keywords :
Clustering , game theory , self-organizing map , vector quantization