A hybrid feature selection technique using chi-square with genetic algorithm

Ammar Ismael Kadhim, Ahmed Ayad Abdalhameed
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引用次数: 1

Abstract

A huge amount of information is available in different fields like information technology and computer science. A new hybrid feature selection technique via using chi-square with genetic algorithm (GA). An automatic text categorization mechanism was required to identify whether the text is going to a specific category or not. Thus, this technique is used to select the importance and unimportance features via developing the training model. For the existing GA-based, terms and documents are used together as features in the training model and obtain the perfect weights for the features. To evaluate the efficiency of document categorization techniques on the suggested approach, experiments results are conducted utilizing the Naïve Bayes (NB) and C4.5 decision tree classifiers based on two different datasets (BBC sport and BBC news datasets) collection for text categorization. From the empirical findings, it can observed that the hybrid technique can allow to obtain high categorization efficiency depend on the performance evaluation metrics accuracy, precision, recall and F1-score.
基于卡方和遗传算法的混合特征选择技术
在信息技术和计算机科学等不同领域,可以获得大量的信息。一种基于卡方和遗传算法的混合特征选择方法。需要一个自动文本分类机制来识别文本是否要进入特定的类别。因此,该技术通过开发训练模型来选择重要和不重要的特征。对于现有的基于ga的训练模型,将术语和文档作为训练模型的特征,并获得特征的完美权值。为了评估文档分类技术在该方法上的效率,利用Naïve贝叶斯(NB)和C4.5决策树分类器基于两个不同的数据集(BBC体育和BBC新闻数据集)进行文本分类的实验结果。从实证结果可以看出,混合技术可以获得较高的分类效率,这取决于性能评估指标准确率、精密度、召回率和f1分数。
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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