sarcasm detection and quantification in arabic tweets
Bashar Talafha, Muhy Eddin Za'ter, Samer Suleiman, Mahmoud Al-Ayyoub,, Mohammed N. Al-Kabi

TL;DR
This paper introduces a new annotated Arabic tweet corpus for sarcasm detection and proposes a regression-based approach to quantify sarcasm levels, addressing linguistic challenges unique to Arabic and advancing sentiment analysis.
Contribution
It creates a novel Arabic sarcasm corpus and presents a regression approach for sarcasm quantification, differing from traditional binary classification methods.
Findings
Successful creation of an annotated Arabic sarcasm tweet corpus
Proposed regression model predicts sarcasm levels effectively
Addresses Arabic language complexities in sarcasm detection
Abstract
The role of predicting sarcasm in the text is known as automatic sarcasm detection. Given the prevalence and challenges of sarcasm in sentiment-bearing text, this is a critical phase in most sentiment analysis tasks. With the increasing popularity and usage of different social media platforms among users around the world, people are using sarcasm more and more in their day-to-day conversations, social media posts and tweets, and it is considered as a way for people to express their sentiment about some certain topics or issues. As a result of the increasing popularity, researchers started to focus their research endeavors on detecting sarcasm from a text in different languages especially the English language. However, the task of sarcasm detection is a challenging task due to the nature of sarcastic texts; which can be relative and significantly differs from one person to another…
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