Hybrid deep learning model for Arabic text classification based on mutual information

IF 1.1 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE
Farah A. Abdulghani, N. A. Abdullah
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引用次数: 0

Abstract

Abstract Text categorization refers to the process of grouping text or documents into classes or categories according to their content, which is a significant task in natural language processing. The majority of the present work focused on English text, with a few experiments on Arabic text. The text classification process consists of many steps, from preprocessing documents (removing stop words and stem method), to feature extraction and classification phase. A new improved approach for Arabic text categorization was proposed using mutual information in a hybrid deep learning model for classification. To test the proposed model, two datasets of Arabic documents are employed. The experimental results demonstrate that employing the proposed mutual information exceeds other prior techniques in terms of performance. In Akhbarona corpus, the Multi-Layer Perceptron achieved a minimum accuracy of 96.09%, while the hybrid Convolution-Long Short-Term Memory had a performance level of 99.28%. In Khaleej corpus, the Gated Recurrent Unit had the maximum accuracy of 98.23%, while Multi-Layer Perceptron had the lowest accuracy of 97.23%
基于互信息的阿拉伯语文本分类混合深度学习模型
摘要文本分类是指根据文本或文档的内容将其分组或分类的过程,这是自然语言处理中的一项重要任务。目前的大部分工作都集中在英语文本上,还有一些关于阿拉伯语文本的实验。文本分类过程包括许多步骤,从预处理文档(去除停止词和词干方法)到特征提取和分类阶段。在混合深度学习分类模型中,利用互信息提出了一种新的改进的阿拉伯语文本分类方法。为了测试所提出的模型,使用了两个阿拉伯文档数据集。实验结果表明,采用所提出的互信息在性能方面超过了其他现有技术。在Akhbarona语料库中,多层感知器的最低准确率为96.09%,而混合卷积长短期记忆的性能水平为99.28%。在Khaleej语料库中,门控递归单元的最高准确率为98.23%,而多层感知机的最低准确度为97.23%
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来源期刊
JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES
JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES INFORMATION SCIENCE & LIBRARY SCIENCE-
自引率
21.40%
发文量
88
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