Feature Selection Using Hybrid Evaluation Approaches Based on Genetic Algorithms

T.L.F. Giraldo, T.E. Delgado, J. Riano, D.G. Castellanos
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引用次数: 2

Abstract

For a given set of samples, a new model is proposed to reduce input feature space, which decreases the learning time of classifiers, but also, improves the prediction accuracy according to the chosen relevance criterion. This model is constructed by decision trees and genetic algorithms, which evaluates by means of k nearest neighbor rule for classification, allowing the evolution model parameters of used genetic algorithm. The training set corresponds to the extracted features from pathological (hypernasality) and non-pathological (normal) speech, acquired from 90 children, 45 examples per class. A comparative analysis between different approaches about feature selection is performed upon experimental results, showing the feasibility of this approach in such a cases involving pathologies recognition
基于遗传算法的混合评价方法特征选择
对于给定的样本集,提出了一种新的模型来减少输入特征空间,减少了分类器的学习时间,并且根据所选择的相关准则提高了预测精度。该模型采用决策树和遗传算法相结合的方法构建,采用k近邻规则进行分类,允许使用遗传算法的进化模型参数。训练集对应于从90个儿童中获得的病理性(高鼻音)和非病理性(正常)语音中提取的特征,每班45个样本。在实验结果的基础上,对不同的特征选择方法进行了比较分析,表明了该方法在涉及病理识别的情况下的可行性
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