无遗传算法的显著矩阵特征选择(显著矩阵2)

Ekapong Chuasuwan
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引用次数: 0

摘要

本文提出了对显著矩阵[1]的改进,该改进与遗传算法一起用于决策树结构中合适数据的特征选择。本文提出了减少遗传算法工作时间的方法。提出了一种新的方法“显著矩阵2”,该方法通过分类数据与类标号之间的关系来确定特征选择的阈值,并且该方法的子数据集包含合适的特征来创建决策树。特征选择次数实验结果。所提出的工作比[1]的工作速度快,平均28倍,并且根据神经网络方法和模型的特点构建了决策树模型的实验结果。所提出的工作给出了11个样本数据库的平均分类准确率为95.9%,并且许多数据特征少于神经网络方法[6]的一些特征,神经网络方法使用的特征仅占示例数据集中所有特征的48.08%。进一步,在比较另一种特征选择方法的分类决策树的准确率时。该方法的平均精度高于其他方法所选数据的平均精度。实验结果表明,该方法不仅具有较高的准确率,而且通过使用较少的数据集特征来降低复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Significant Matrix without Genetic Algorithm for the feature selection (Significant Matrix 2)
This paper presents to the improvement of the Significant Matrix [1] that works along with Genetic Algorithm in feature selection of appropriate data for a decision tree structure. This work proposes the reduction of time that cut off the Genetic Algorithm's work times. The new method is proposed in the name “Significant Matrix 2” which is calculated from the relationship between categorical data and a class label for determining the threshold of the feature selection and the sub-dataset from the method contains the appropriate feature to create decision trees. The results of experiment of feature selection times. The proposed work can work faster than [1], average 28 times and the results of experiments of the decision tree model is constructed from the feature of the method and model of neural networks. The proposed work gives the average accuracy of the classification at 95.9% of the 11 sample database, also a number of the data features are less than a number of the features from the method of neural networks [6] that uses the feature only 48.08% from all feature in example dataset. Furthermore, when comparing the accuracy of the classification decision tree which another feature selected method. This proposed work have the amount of average accuracy higher than the selected data from another method. Experimental results show that the proposed method does not only provide a higher accuracy, but reduce the complexity by using less features of the dataset.
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