A filter-based evolutionary approach for selecting features in high-dimensional micro-array data

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Abstract

Evolutionary algorithms have received much attention in extracting knowledge on high-dimensional micro-array data, being crucial to their success a suitable definition of the search space of the potential solutions. In this paper, we present an evolutionary approach for selecting informative genes (features) to predict and diagnose cancer. We propose a procedure that combines results of filter methods, which are commonly used in the field of data mining, to reduce the search space where a genetic algorithm looks for solutions (i.e. gene subsets) with better classification performance, being the quality (fitness) of each solution evaluated by a classification method. The methodology is quite general because any classification algorithm could be incorporated as well a variety of filter methods. Extensive experiments on a public micro-array dataset are presented using four popular filter methods and SVM. © 2010 IFIP.

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Cannas, L. M., Dessì, N., & Pes, B. (2010). A filter-based evolutionary approach for selecting features in high-dimensional micro-array data. In IFIP Advances in Information and Communication Technology (Vol. 340 AICT, pp. 297–307). Springer Science and Business Media, LLC. https://doi.org/10.1007/978-3-642-16327-2_36

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