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Semi-wrapper feature subset selector for feed-forward neural networks: Applications to binary and multi-class classification problems

机译:前馈神经网络的半包装特征子集选择器:对二进制和多类分类问题的应用

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摘要

This paper explores widely the data preparation stage within the process of knowledge discovery and data mining via feature subset selection in the context of two very well-known neural models: radial basis function neural networks and multi-layer perceptron. It is known the best performance of wrapper attribute selection methods based on the evaluation measure provided by a classifier, although the temporal complexity of learning neural networks practically precludes the use of wrapper techniques, especially in complex databases with high dimensionality and a large number of labels. In this paper, we propose the use of the Naive Bayes classifier as a fitness function within a semi-wrapper feature selection approach. The Naive Bayes classifier is a good fast approach to a neural network and utilising it as a measure of goodness in a backward search on a ranking provides a specific attribute selection method for neural networks in complex data. The test-bed consists of 34 binary and multi-class classification problems and 7 feature selectors. Of these, there are 6 data sets with upwards of 5 classes. According to the reported accuracy results that have been supported by non-parametric statistical tests in different scenarios, our method has been shown to be very suitable for both kinds of neural networks. Moreover, the reduced feature-space is around 20% of the full attribute space. The speedup with the aforementioned semi-wrapper is very outstanding and its value fluctuates, on average, from about 1.5 with radial basis function neural networks to around 30 with multi-layer perceptron. (C) 2019 Published by Elsevier B.V.
机译:本文在两个非常著名的神经模型(径向基函数神经网络和多层感知器)的上下文中,通过特征子集选择,广泛探索了知识发现和数据挖掘过程中的数据准备阶段。尽管基于学习器神经网络的时间复杂性实际上排除了包装技术的使用,特别是在具有高维和大量标签的复杂数据库中,但基于分类器提供的评估方法的包装属性选择方法的最佳性能是众所周知的。在本文中,我们建议使用朴素贝叶斯分类器作为半包装特征选择方法中的适应度函数。朴素贝叶斯分类器是一种快速有效的神经网络方法,将其用作对排名进行后向搜索时的优良性度量,为复杂数据中的神经网络提供了一种特定的属性选择方法。该测试平台包括34个二进制和多类分类问题以及7个功能选择器。其中,有6个数据集,其中5类以上。根据报告的准确性结果在不同情况下的非参数统计检验的支持,我们的方法已被证明非常适合两种神经网络。此外,缩小的特征空间约为整个属性空间的20%。前面提到的半包装器的加速非常出色,其值平均从使用径向基函数神经网络的约1.5到使用多层感知器的约30波动。 (C)2019由Elsevier B.V.发布

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