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Feature selection for neural network classifiers using saliency and genetic algorithms

机译:基于显着性和遗传算法的神经网络分类器特征选择

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Abstract: In this paper the authors present the results of a research investigation on feature selection methods for neural network classifiers. As problems presented to computers for analysis become more complex and data dimensionality grows in size, traditional methods of feature extraction are being taxed beyond the limits of their usefulness. New methods of feature selection show promise in the laboratory, but need to be proven with real-world solutions. The purpose of this research is to compare the performance of newly proposed methods of selecting features on three challenging problems using non- artificial data. A feature saliency technique, and several variants of genetic algorithms, and random feature selection are compared and contrasted. !30
机译:摘要:本文作者介绍了神经网络分类器特征选择方法的研究成果。随着呈现给计算机以供分析的问题变得越来越复杂,并且数据维数的规模越来越大,传统的特征提取方法正受到越来越多的使用限制。新的特征选择方法在实验室中显示出了希望,但需要通过实际解决方案进行验证。这项研究的目的是比较使用非人工数据针对三种具有挑战性的问题选择特征的新提议方法的性能。比较并对比了特征显着性技术,遗传算法的几种变体以及随机特征选择。 !30

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