Presenting an improved combination for classification of Persian texts

M. Jahantigh, M. Erfani, N. Daneshpour, Nargess Orojlou
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引用次数: 4

Abstract

Since text mining saves a large amount of information in text format, it has a very high potential application. One of the main applications of text mining is to classify texts in subject order. In this paper, we tried to propose a aarianew method in order to increase classification accuracy and efficiency, by considering different methods of Persian text classification. We used a number of 5330 news of Hamshahri data collection, for classification. In pre-processing of texts for removing stop words, we proposed a new method by using entropy of words. To extract the feature, word frequencies, and Tf-idf methods have been used. K nearest neighbor algorithm, Naive Bayes classification, and mixture of classifiers, have been used to classify texts, by using combinational classification and mixture of experts. Implementation of proposed method has caused a 15 percent improvement comparing to the previous works done on this data collection, by presenting entropy in pre-processing and also mixture of classifiers. In the best condition, scientific and cultural news has gained 96.36 percent classification accuracy.
提出波斯语文本分类的改进组合
由于文本挖掘以文本形式保存了大量的信息,因此具有很高的应用潜力。文本挖掘的一个主要应用是按主题顺序对文本进行分类。本文通过对不同波斯语文本分类方法的综合考虑,提出了一种新的波斯语文本分类方法,以提高分类精度和效率。我们收集了5330条Hamshahri新闻的数据,进行分类。在文本预处理中,我们提出了一种利用词熵去除停止词的新方法。为了提取特征,使用了词频和Tf-idf方法。K最近邻算法、朴素贝叶斯分类和混合分类器已被用于文本分类,通过使用组合分类和混合专家。通过在预处理和混合分类器中呈现熵,与之前在该数据收集上所做的工作相比,所提出的方法的实现已经带来了15%的改进。在最佳状态下,科技文化新闻的分类准确率达到96.36%。
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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