Utilizing artificial bee colony algorithm as feature selection method in arabic text classification

M. Hijazi, A. Zeki, A. Ismail
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Abstract

A huge amount of crucial information is contained in documents. The vast increase in the number of E-documents available for user access makes the utilization of automated text classification essential. Classifying or arranging documents into predefined groups is called Text classification. Feature selection (FS) is needed for minimizing the dimensionality of high-dimensional data and extracting only the features that are most pertinent to a particular task. One of the widely used algorithms for feature selection in text classification is the Evolutionary algorithm. In this paper, the filter method chi-square and the Artificial Bee Colony (ABC) algorithm were both used as FS methods. The chi-square method is a useful technique for reducing the number of features and removing those that are superfluous or redundant. The ABC technique considers the chi-square method's chosen features as viable solutions (food sources). The ABC algorithm searches for the most efficient selection of features that increase classification performance. Support Vector Machine and Naïve Bayes classifiers were used as a fitness function for the ABC algorithm. The experiment results demonstrated that the proposed feature selection method was able of decreasing the number of features by approximately 89.5%, and 94%, respectively when NB and SVM were used as fitness functions in comparison to the original dataset, while also enhancing classification performance
利用人工蜂群算法作为阿拉伯语文本分类的特征选择方法
文件中包含了大量的关键信息。可供用户访问的电子文档数量的大量增加使得使用自动文本分类变得必不可少。将文档分类或安排到预定义的组中称为文本分类。特征选择(FS)用于最小化高维数据的维数,并仅提取与特定任务最相关的特征。进化算法是文本分类中广泛使用的特征选择算法之一。本文采用滤波方法卡方法和人工蜂群(Artificial Bee Colony, ABC)算法作为FS方法。卡方方法是减少特征数量和去除多余或冗余特征的有用技术。ABC技术考虑卡方方法选择的特征作为可行的解决方案(食物来源)。ABC算法搜索最有效的特征选择,以提高分类性能。采用支持向量机和Naïve贝叶斯分类器作为ABC算法的适应度函数。实验结果表明,当使用NB和SVM作为适应度函数时,与原始数据集相比,所提出的特征选择方法能够分别减少约89.5%和94%的特征数量,同时也提高了分类性能
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