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Markov blanket-embedded genetic algorithm for gene selection
Authors:Zexuan Zhu [Author Vitae]  Yew-Soon Ong [Author Vitae]  Manoranjan Dash [Author Vitae]
Affiliation:a Division of Information Systems, School of Computer Engineering, Nanyang Technological University, Nanyang Avenue, Singapore 639798, Singapore
b Bioinformatics Research Centre, Nanyang Technological University, Research TechnoPlaza, 50 Nanyang Drive, Singapore 637553, Singapore
Abstract:Microarray technologies enable quantitative simultaneous monitoring of expression levels for thousands of genes under various experimental conditions. This new technology has provided a new way of biological classification on a genome-wide scale. However, predictive accuracy is affected by the presence of thousands of genes many of which are unnecessary from the classification point of view. So, a key issue of microarray data classification is to identify the smallest possible set of genes that can achieve good predictive accuracy. In this study, we propose a novel Markov blanket-embedded genetic algorithm (MBEGA) for gene selection problem. In particular, the embedded Markov blanket-based memetic operators add or delete features (or genes) from a genetic algorithm (GA) solution so as to quickly improve the solution and fine-tune the search. Empirical results on synthetic and microarray benchmark datasets suggest that MBEGA is effective and efficient in eliminating irrelevant and redundant features based on both Markov blanket and predictive power in classifier model. A detailed comparative study with other methods from each of filter, wrapper, and standard GA shows that MBEGA gives a best compromise among all four evaluation criteria, i.e., classification accuracy, number of selected genes, computational cost, and robustness.
Keywords:Microarray  Feature selection  Markov blanket  Genetic algorithm (GA)  Memetic algorithm (MA)
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