Deep Learning-Based Sentiment Analysis of Algerian Dialect during Hirak 2019

A. Mazari, Abdelhamid Djeffal
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引用次数: 3

Abstract

Recent studies have used sentiment classification to analyze social media content using either semantic rule-based methods such as linguistic extraction models obtained from morpho-syntactic analysis, statistical methods based on Bag-of-word techniques or machine learning and deep learning models. This work uses the traditional Machine Learning algorithms and the Deep Learning models (Convolutional Neural Networks CNN and Recurrent Neural Networks RNN) applying on corpus collected from social media (Facebook, YouTube and Twitter) about the Hirak_19 (popular protest in Algeria during 2019) written in Algerian Dialect to analyze sentiments and provide a deeper understanding of opinions. The corpus is built from several dialectal Arabic texts; it consists of 7800 comments about political Hirak topics. CNN and RNN have been applied in several applications; in this paper, we show their power of detecting and classifying opinions about a social issue and analyzing sentiments. The results are positive demonstrated by the accuracy scheme 63.28% (CNN) and 60.97 (RNN) of cross-validation tests.
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基于深度学习的Hirak阿尔及利亚方言情感分析
最近的研究使用情感分类来分析社交媒体内容,要么使用基于语义规则的方法,如从形态句法分析中获得的语言提取模型,要么使用基于词袋技术或机器学习和深度学习模型的统计方法。这项工作使用传统的机器学习算法和深度学习模型(卷积神经网络CNN和循环神经网络RNN),应用于从社交媒体(Facebook, YouTube和Twitter)收集的语料库上,分析用阿尔及利亚方言写的Hirak_19(2019年阿尔及利亚的流行抗议活动)的情绪,并提供对意见的更深入理解。语料库是建立在几个方言阿拉伯语文本;它由7800条关于政治话题的评论组成。CNN和RNN已在多个应用中得到应用;在本文中,我们展示了它们在检测和分类关于社会问题的意见以及分析情绪方面的能力。交叉验证试验的准确率分别为63.28% (CNN)和60.97 (RNN)。
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