A filter model for feature subset selection based on genetic algorithm
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摘要
This paper describes a novel feature subset selection algorithm, which utilizes a genetic algorithm (GA) to optimize the output nodes of trained artificial neural network (ANN). The new algorithm does not depend on the ANN training algorithms or modify the training results. The two groups of weights between input-hidden and hidden-output layers are extracted after training the ANN on a given database. The general formula for each output node (class) of ANN is then generated. This formula depends only on input features because the two groups of weights are constant. This dependency is represented by a non-linear exponential function. The GA is involved to find the optimal relevant features, which maximize the output function for each class. The dominant features in all classes are the features subset to be selected from the input feature group.
论文关键词:Feature subset selection,Relevant feature,Genetic algorithm,Artificial neural networks,Non-linear optimization,Fitness function
论文评审过程:Received 15 January 2008, Revised 27 September 2008, Accepted 17 February 2009, Available online 26 February 2009.
论文官网地址:https://doi.org/10.1016/j.knosys.2009.02.006