结合TF-IDF算法的支持向量机对孟加拉文文档进行分类

Md Saiful Islam, Fazla Elahi Md Jubayer, S. Ahmed
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引用次数: 33

摘要

文档分类是一种确定文档类别的技术。本文研究了孟加拉语文献的自动分类问题。在该分类系统中,使用支持向量机对文档进行预先定义的12类分类。该分类模型在数据集预处理完成后,采用长度归一化的TFIDF (term frequency-inverse document frequency)加权进行特征选择。结果表明,与基于词袋选择特征的传统方法相比,使用支持向量机对孟加拉语文档进行分类的结果非常有希望。在12个类别中,该方法的准确率为92.57%。
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A support vector machine mixed with TF-IDF algorithm to categorize Bengali document
Document categorization is a technique through which the category of a document is determined. This paper deals with the automatic classification of Bangla documents. In this proposed categorization system, a support vector machine is used for classifying a document in predefine twelve categories. In this classification model TFIDF (term frequency-inverse document frequency) weighting with length normalization is used for feature selection after the preprocessing of data set is complete. It is shown that the results achieved by applying SVM to classify the category of a Bangla document are very promising as compared to conventional methods where features are chosen on the basis of bag-of-words. The accuracy of this proposed methodology is 92.57% for twelve categories.
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