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arxiv: 1201.4914 · v1 · pith:FN6SDAIHnew · submitted 2012-01-24 · 💻 cs.CE · q-bio.GN· q-bio.QM

Effective Clustering Algorithms for Gene Expression Data

classification 💻 cs.CE q-bio.GNq-bio.QM
keywords expressiondatagenealgorithmproposedanalysisclusterclustering
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Microarrays are made it possible to simultaneously monitor the expression profiles of thousands of genes under various experimental conditions. Identification of co-expressed genes and coherent patterns is the central goal in microarray or gene expression data analysis and is an important task in Bioinformatics research. In this paper, K-Means algorithm hybridised with Cluster Centre Initialization Algorithm (CCIA) is proposed Gene Expression Data. The proposed algorithm overcomes the drawbacks of specifying the number of clusters in the K-Means methods. Experimental analysis shows that the proposed method performs well on gene Expression Data when compare with the traditional K- Means clustering and Silhouette Coefficients cluster measure.

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