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The Impact of Pre-processing and Feature Selection on Text Classification

机译:预处理和特征选择对文本分类的影响

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Abstract Nowadays text classification is dealing with unstructured and high-dimensionality text document. These textual data can be easily retrieved from social media platforms. However, this textual data is hard to manage and process for classification purposes. Pre-processing activities and feature selection are two methods to process the text documents. Therefore, this paper is presented to evaluate.the effect of pre-processing and feature selection on the text classification performance. A tweet dataset is utilized and pre-processed using several combinations of pre-processing activities (tokenization, removing stop-words and stemming). Later, two feature selection techniques (Bag-of-Words and Term Frequency-Inverse Document Frequency) are applied on the pre-processed text. Finally, Support Vector Machine classifier is used to test the classification performances. The experimental results reveal that the combination of pre-processing technique and TF-IDF approach achieved greater classification performances compared to BoW approach. Better classification performances hit when the number of features is decreased. However, it is depending on the number of features obtained from the pre-processing activities and feature selection technique chosen.
机译:摘要现在文本分类正在处理非结构化和高度的文本文本。可以从社交媒体平台轻松检索这些文本数据。但是,这种文本数据很难管理和处理分类目的。预处理活动和特征选择是处理文本文档的两种方法。因此,提出了本文评估。预处理和特征选择对文本分类性能的影响。使用推文数据集使用并预处理预处理活动的多种组合(令牌化,删除停止词和茎)。稍后,在预处理的文本上应用两个特征选择技术(单词袋和术语频率 - 逆文档频率)。最后,支持向量机分类器用于测试分类性能。实验结果表明,与弓形方法相比,预处理技术和TF-IDF方法的组合实现了更大的分类性能。当功能数量减少时,更好的分类表演。但是,取决于从预处理活动获得的功能数量和所选择的特征选择技术。

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