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A systematic review of text classification research based on deep learning models in Arabic language

机译:基于阿拉伯语深度学习模型的文本分类研究系统综述

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Classifying or categorizing texts is the process by which documents are classified into groups by subject, title, author, etc. This paper undertakes a systematic review of the latest research in the field of the classification of Arabic texts. Several machine learning techniques can be used for text classification, but we have focused only on the recent trend of neural network algorithms. In this paper, the concept of classifying texts and classification processes are reviewed. Deep learning techniques in classification and its type are discussed in this paper as well. Neural networks of various types, namely, RNN, CNN, FFNN, and LSTM, are identified as the subject of study. Through systematic study, 12 research papers related to the field of the classification of Arabic texts using neural networks are obtained: for each paper the methodology for each type of neural network and the accuracy ration for each type is determined. The evaluation criteria used in the algorithms of different neural network types and how they play a large role in the highly accurate classification of Arabic texts are discussed. Our results provide some findings regarding how deep learning models can be used to improve text classification research in Arabic language.
机译:分类或分类文本是由主题,标题,作者等分类文件的过程。本文本文对阿拉伯语文本分类领域的最新研究进行了系统审查。几种机器学习技术可用于文本分类,但我们仅关注最近神经网络算法的趋势。在本文中,审查了分类文本和分类过程的概念。本文还讨论了分类中的深度学习技术及其类型。各种类型的神经网络,即RNN,CNN,FFNN和LSTM,被识别为研究主题。通过系统研究,获得了使用神经网络的阿拉伯语文本分类领域的12个研究论文:对于每种纸张,确定每种类型的神经网络和每种类型的精度率的方法。讨论了不同神经网络类型的算法中使用的评估标准以及它们在高度准确分类的阿拉伯语文本中发挥着大作用。我们的结果提供了一些关于深度学习模式如何用于改善阿拉伯语文本分类研究的研究。

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