Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/9716
Title: Approach for Detecting Arabic Fake News using Deep Learning
Authors: Khalid Shaker, Arwa Alqudsi
Keywords: Fake news
FND
Deep learning
CNNs
Issue Date: 5-May-2024
Publisher: Iraqi Journal for Computer Science and Mathematics
Abstract: Fake news has spread more widely over the past few years. The development of social media and internet websites has fueled the spread of fake news, causing it to mix with accurate information. The majority of studies on Fake News Detection FND were in English, but recent attention has been focused on Arabic. However, there aren't many studies on Arabic fake news detection. In this work, a new Arabic fake news detection approach has been proposed using Arabic dataset publically available and a translated English fake news dataset into Arabic. A new model Text-CNNs based on 1D Convolution Neural Networks CNNs has been used for classification real and fake news. Extensive experimental results on the Arabic fake news dataset show that our proposed approach provided high detection accuracy about (99.67%), Precision (99.45), Recall (99.65) and F1-score (99.50).
URI: http://localhost:8080/xmlui/handle/123456789/9716
ISSN: 2788-7421
Appears in Collections:قسم نظم المعلومات

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