Revue de l'Information Scientifique et Technique
Volume 27, Numéro 2, Pages 50-55
2023-11-08
Authors : Talai Zoubir . Kherici Nada .
In the last decade, social media and internet involvement in people's life raised new challenges that modern AI needs to deal with. Textual data is generated every time an article is published or an online post is shared or even a simple comment is made. Among these challenges, we find text classification which is used to identify the general meaning of a set of words using AI methods. In this paper, we propose a simple yet effective convolutional neural network architecture that can be used for text classification and sentiment analysis. We tested our proposition on 5 different tweets datasets, Hate Speech, Fake News, Arabic Covid Sentiment, Arabic Sentiment, and English Sentiment, and obtained respectively 99,85%, 99,86%, 99,58%, 97,97%, 95,65% accuracy on the training subset and 98,43%, 94,74%, 87,53%, 54,90%, 60,62% accuracy on the validation subset.
Text Classification ; Sentiment Analysis ; Deep Learning ; Convolutional Neural Network
Bounaama Rabia
.
Abderrahim Mohammed El Amine
.
pages 18-23.
Ghoul Amina
.
Guerza Radia
.
pages 784-791.
Ghoul Amina
.
Nedjai Mohamed Salah
.
pages 827-841.
بحوصي عبد الكريم
.
ص 65-76.
Boufenara Khjedidja
.
Labii Belkacem
.
pages 15-22.