Arabic Text Sentiment Analysis is a thriving research area, yet still underrepresented. The study analyzes existing ASA studies, identifying common themes, approaches, and challenges. It emphasizes the necessity for enhanced resources and tools to advance Arabic sentiment analysis.
The content explores the application areas of sentiment analysis, types of sentiment analysis, specific challenges faced in Arabic sentiment analysis, related research on Arabic SA surveys, research questions posed by the authors, methods employed in the study, results obtained from literature searches and sifting processes, overview of included studies with detailed analyses of different approaches identified for ASA.
Furthermore, it delves into data extraction and analysis methodologies used in the study along with topic modeling techniques applied. The results section presents findings from searches and sifting processes while discussing various approaches like supervised learning, unsupervised learning, hybrid approaches, deep learning models like CNNs and RNNs used for ASA. It also covers transfer learning applications in sentiment analysis.
The note provides a comprehensive overview of the content's key points regarding Arabic text sentiment analysis challenges and solutions explored by the authors.
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