An experimental study of several decision issues for feature selection with multi-layer perceptrons

E. Romero, J. Sopena
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Abstract

An experimental study of several decision issues for wrapper feature selection with multi-layer perceptrons is presented, namely the stopping criterion, the data set where the saliency is measured and the network retraining before computing the saliency. Experimental results with the sequential backward selection procedure indicate that the increase in the computational cost associated with retraining the network with every feature temporarily removed before computing the saliency is rewarded with a significant performance improvement. Despite being quite intuitive, this idea has been hardly used in practice. Regarding the stopping criterion and the data set where the saliency is measured, the procedure profits from measuring the saliency in a validation set, as reasonably expected. A somehow non-intuitive conclusion can be drawn by looking at the stopping criterion, where it is suggested that forcing overtraining may be as useful as early stopping.
多层感知器特征选择决策问题的实验研究
实验研究了多层感知器在包装器特征选择中的几个决策问题,即停止准则、测量显著性的数据集以及计算显著性前的网络再训练。使用顺序向后选择过程的实验结果表明,在计算显着性之前,将每个特征暂时移除,重新训练网络所带来的计算成本的增加带来了显著的性能提高。尽管这个想法很直观,但在实践中几乎没有使用过。对于停止准则和测量显著性的数据集,该过程从测量验证集中的显著性中获益,这是合理预期的。通过观察停止标准可以得出一个不太直观的结论,其中建议强制过度训练可能与早期停止一样有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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