Sentiment Analysis of Tweets Related to the Gaza War
Loading...
Date
2025-06-15
Journal Title
Journal ISSN
Volume Title
Publisher
Mohamed Boudiaf University of M'sila
Abstract
This research aims to analyze the sentiment of Arabic tweets related to the Gaza conflict. The
dataset was built by collecting tweets from social media platforms and previous studies, ensuring a
diversity of dialects and perspectives. The tweets underwent preprocessing using a custom Python code,
which included removing emojis, standardizing spellings, and removing ineffective common words.
Sentiments were then manually classified as positive, negative, or neutral. A modified AraBERT model
was trained to accurately perform the classification task. The final system allows for the input of new
Arabic tweets and their sentiment analysis with high accuracy.
Description
Keywords
Sentiment Analysis, HUMANITIES and RELIGION::Languages and linguistics::Other languages::Arabic language, Tweets, Gaza Conflict, Deep Learning, AraBERT, NLP, Classification