Arabic Language Sentiment Analysis Using Feature Engineering and Deep Learning RNN-LSTM Framework

Eman G. Allam, Magda M. Madbouly, S. Guirguis
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Abstract

Consistent enormous generated data on the internet becomes one of the most sophisticated tasks that need profound artificial analysis. Given that, the researches in sentiment analysis addressed many techniques to deal with sentiment analysis (SA) in multiple languages. Nonetheless, the state-of-the-art for the Arabic Language sentiment analysis (ALSA) quite needs more improvements. The research area in Arabic has many challenges on account of its complex, unique nature and structure. SA is the computational analysis of the people’s opinions, attitudes, emotions and evaluations from the document. This paper proposes an approach for examining the SA in the Arabic language using the linguistic feature extraction, word embedding and deep learning RNN-LSTM frameworks on the sentence level. The proposed model has been evaluated on a large Dataset of Arabic Tweets (ArSAS) reaching 21 thousand Arabic tweets twice. The first experiment was without considering the linguistic features and compared to extract the linguistics features from the data. The experiment demonstrates that the approach achieves state-of-the-art results and it shows a significant increase in the F-score reaching 81.1%.
基于特征工程和深度学习RNN-LSTM框架的阿拉伯语情感分析
互联网上海量数据的一致性成为最复杂的任务之一,需要深入的人工分析。鉴于此,情感分析研究提出了许多处理多语言情感分析的技术。然而,阿拉伯语情感分析(ALSA)的技术水平还需要进一步提高。阿拉伯语研究领域由于其复杂、独特的性质和结构,面临着许多挑战。情景分析是对人们的意见、态度、情绪和对文件的评价进行计算分析。本文提出了一种在句子层面上使用语言特征提取、词嵌入和深度学习RNN-LSTM框架来检测阿拉伯语SA的方法。所提出的模型已经在一个大型阿拉伯语推文数据集(ArSAS)上进行了评估,该数据集达到21000条阿拉伯语推文两次。第一个实验不考虑语言特征,通过对比从数据中提取语言特征。实验表明,该方法达到了最先进的效果,f分数显著提高,达到81.1%。
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