A novel hybrid feature selection via Symmetrical Uncertainty ranking based local memetic search algorithm

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摘要

A novel correlation based memetic framework (MA-C) which is a combination of genetic algorithm (GA) and local search (LS) using correlation based filter ranking is proposed in this paper. The local filter method used here fine-tunes the population of GA solutions by adding or deleting features based on Symmetrical Uncertainty (SU) measure. The focus here is on filter methods that are able to assess the goodness or ranking of the individual features. Empirical study of MA-C on several commonly used datasets from the large-scale Gene expression datasets indicates that it outperforms recent existing methods in the literature in terms of classification accuracy, selected feature size and efficiency. Further, we also investigate the balance between local and genetic search to maximize the search quality and efficiency of MA-C.

论文关键词:Correlation based memetic search,Symmetrical Uncertainty ranking,Hybrid feature selection

论文评审过程:Received 1 May 2009, Revised 25 March 2010, Accepted 31 March 2010, Available online 22 April 2010.

论文官网地址:https://doi.org/10.1016/j.knosys.2010.03.016