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Dr. Hamada Ali Mohamed Ali Nayel :: Publications:

Title:
A Comparative Study of Machine Learning Approaches for Rumors Detection in Covid-19 Tweets
Authors: Nsrin Ashraf; Hamada Nayel; Mohamed Taha
Year: 2022
Keywords: Machine Learning, Fake News Detection, Covid-19 Rumors Detection
Journal: Not Available
Volume: Not Available
Issue: Not Available
Pages: Not Available
Publisher: Not Available
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

Analysing social media content becomes a crucial task due to the tremendous usage of social media platforms. In the era of COVID-19, detecting rumors becomes a vital task. In natural language processing, detecting rumors is a challenging task due to the complexity of rumors and tracking the source of rumors. In this paper, we proposed a machine learning-based model for rumors detection in COVID-19 related tweets for both English and Arabic Languages. Different machine learning algorithms have been implemented and Term Frequency / Inverse Document Frequency tf/idf has been used for feature extraction. The performance of all implemented classifiers has been analysed and compared. Our approach does not use external resources or data and depends only on the given training data.

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