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Filter-based feature selection in the context of evolutionary neural networks in supervised machine learning

机译:监督机器学习中进化神经网络中基于过滤器的特征选择

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This paper presents a workbench to get simple neural classification models based on product evolutionary networks via a prior data preparation at attribute level by means of filter-based feature selection. Therefore, the computation to build the classifier is shorter, compared to a full model without data pre-processing, which is of utmost importance since the evolutionary neural models are stochastic and different classifiers with different seeds are required to get reliable results. Feature selection is one of the most common techniques for pre-processing the data within any kind of learning task. Six filters have been tested to assess the proposal. Fourteen (binary and multi-class) difficult classification data sets from the University of California repository at Irvine have been established as the test bed. An empirical study between the evolutionary neural network models obtained with and without feature selection has been included. The results have been contrasted with nonparametric statistical tests and show that the current proposal improves the test accuracy of the previous models significantly. Moreover, the current proposal is much more efficient than the previous methodology; the time reduction percentage is above 40%, on average. Our approach has also been compared with several classifiers both with and without feature selection in order to illustrate the performance of the different filters considered. Lastly, a statistical analysis for each feature selector has been performed providing a pairwise comparison between machine learning algorithms.
机译:本文提出了一个工作台,该工作台通过使用基于过滤器的特征选择在属性级别进行先验数据准备,从而基于产品进化网络获得简单的神经分类模型。因此,与没有数据预处理的完整模型相比,构建分类器的计算时间较短,这是最重要的,因为进化神经模型是随机的,并且需要具有不同种子的不同分类器才能获得可靠的结果。特征选择是在任何类型的学习任务中预处理数据的最常用技术之一。已经测试了六个过滤器以评估提案。已从加利福尼亚大学尔湾分校的存储库中建立了十四个(二进制和多分类)困难分类数据集作为测试平台。包含和不包含特征选择的演化神经网络模型之间的实证研究已包括在内。将结果与非参数统计测试进行了对比,结果表明,当前的建议显着提高了先前模型的测试准确性。而且,当前的提议比以前的方法更有效率。平均减少时间百分比超过40%。我们的方法还与具有和不具有特征选择的几个分类器进行了比较,以说明所考虑的不同滤波器的性能。最后,已对每个功能选择器进行了统计分析,从而提供了机器学习算法之间的成对比较。

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