Skip to main content

Automated Arabic Long-Tweet Classification Using Transfer Learning with BERT

Author name : MOHAMED MOHAMED EZZELDIN ISMAIL
Publication Date : 2023-03-09
Journal Name : Applied Sciences

Abstract

Social media platforms like Twitter are commonly used by people interested in various activities, interests, and subjects that may cover their everyday activities and plans, as well as their thoughts on religion, technology, or the products they use. In this paper, we present bidirectional encoder representations from transformers (BERT)-based text classification model, ARABERT4TWC, for classifying the Arabic tweets of users into different categories. This work aims to provide an enhanced deep-learning model that can automatically classify the robust Arabic tweets of different users. In our proposed work, a transformer-based model for text classification is constructed from a pre-trained BERT model provided by the hugging face transformer library with custom dense layers. The multi-class classification layer is built on top of the BERT encoder to categorize the tweets. First, data sanitation and preprocessing were performed on the raw Arabic corpus to improve the model’s accuracy. Second, an Arabic-specific BERT model was built and input embedding vectors were fed into it. Using five publicly accessible datasets, substantial experiments were executed, and the fine-tuning technique was assessed in terms of tokenized vector and learning rate. In addition, we assessed the accuracy of various deep-learning models for classifying Arabic text.

Keywords

Tweet Classification,BERT

Publication Link

https://doi.org/10.3390/app13063482

Block_researches_list_suggestions

Suggestions to read

HIDS-IoMT: A Deep Learning-Based Intelligent Intrusion Detection System for the Internet of Medical Things
Ahlem . Harchy Ep Berguiga
Generalized first approximation Matsumoto metric
AMR SOLIMAN MAHMOUD HASSAN
Structure–Performance Relationship of Novel Azo-Salicylaldehyde Disperse Dyes: Dyeing Optimization and Theoretical Insights
EBTSAM KHALEFAH H ALENEZY
“Synthesis and Characterization of SnO₂/α-Fe₂O₃, In₂O₃/α-Fe₂O₃, and ZnO/α-Fe₂O₃ Thin Films: Photocatalytic and Antibacterial Applications”
Asma Arfaoui
Contact