Title :
Weighted Kernel Fuzzy C-Means Method for Gene Expression Analysis
Author :
Wang, Yu ; Angelova, Maia
Author_Institution :
Math. & Intell. Modeling Lab., Northumbria Univ., Newcastle upon Tyne, UK
Abstract :
Many clustering techniques have been proposed for the analysis of gene expression data. However, the optimal method for a given experimental dataset is still not resolved. Fuzzy c-means and kernel fuzzy c-means algorithm have been widely applied to gene expression data, but they give the equal weight to the genes and noises, which lead to results that are not stable or accurate. In this paper, we propose a local weighted fuzzy clustering method in the kernel space. The original data is mapped to the high-dimensional feature space and Gaussian function is employed to investigate the local information of the cluster centre. Consequently, it will assign different weights to the noise and genes. Our experiments show that the proposed methods achieve better clustering effect than the fuzzy clustering algorithm and fuzzy kernel clustering algorithm.
Keywords :
Gaussian processes; biology computing; fuzzy set theory; genetics; pattern clustering; Gaussian function; fuzzy kernel clustering algorithm; gene expression data analysis; high-dimensional feature space; kernel space; local weighted fuzzy clustering method; optimal method; weighted kernel fuzzy c-means method; Clustering algorithms; Clustering methods; Gene expression; Indexes; Kernel; Noise;
Conference_Titel :
Engineering and Technology (S-CET), 2012 Spring Congress on
Conference_Location :
Xian
Print_ISBN :
978-1-4577-1965-3
DOI :
10.1109/SCET.2012.6342018