Affiliation:
1. Faculty of Sciences and Techniques, IR2M Laboratory, Hassan First University of Settat, Settat, Morocco
Abstract
Sentiment analysis has become a prevalent issue in the research community, with researchers employing data mining and artificial intelligence approaches to extract insights from textual data. Sentiment analysis has progressed from simply classifying evaluations as positive or negative to a sophisticated task requiring a fine-grained multimodal analysis of emotions, manifestations of sarcasm, aggression, hatred, and racism. Sarcasm occurs when the intended message differs from the literal meaning of the words employed. Generally, the content of the utterance is the opposite of the context. Sentiment analysis tasks are hampered when a sarcastic tone is recognized in user-generated content. Thus, automatic sarcasm detection in textual data dramatically impacts the performance of sentiment analysis models. This study aims to explain the basic architecture of a sarcasm detection system and the most effective techniques for extracting sarcasm. Then, for the Arabic language, determining the gap and challenges.
Subject
Artificial Intelligence,General Engineering,Statistics and Probability
Reference87 articles.
1. Shaalan K. , Siddiqui S. and Alkhatib M. , Chapter 3, Series on Language Processing, Pattern Recognition, and Intelligent Systems Computational Linguistics, Speech and Image Processing for Arabic Language, pp. 59–83 (2018). https://doi.org/10.1142/9789813229396_0003
2. Elkateb S. and Black W. , Arabic Word Net and the Challenges of Arabic, no. Tufis 2004 pp. 15–24, 2005.
3. El-makky N. et al., Sentiment Analysis of Colloquial Arabic Tweets, no. October, 2015, 2014.
4. Zeroual I. and Lakhouaja A. , Arabic Information Retrieval: Stemmingor Lemmatization? 2017.
5. Alhawarat M.O. , Abdeljaber H. and Hilal A. , Effect of stemming on text similarity for Arabic language at sentence level, 2021.