Arabic News Classification Based on the Country of Origin Using Machine Learning and Deep Learning Techniques

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Abstract

With the rise of Arabic news articles published daily, people are becoming increasingly concerned about following the news from reliable sources, especially regarding events that impact their country. To assess a news article’s significance to the user, it is essential to identify the article’s country of origin. This paper proposes several classification models that categorize Arabic news articles based on their country of origin. The models were developed using comprehensive machine learning and deep learning techniques with several feature training methods. The results show the ability of our model to classify news articles based on their country of origin, with close accuracy between machine learning and deep learning techniques of up to 94%.

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APA

Zamzami, N., Himdi, H., & Sabbeh, S. F. (2023). Arabic News Classification Based on the Country of Origin Using Machine Learning and Deep Learning Techniques. Applied Sciences (Switzerland), 13(12). https://doi.org/10.3390/app13127074

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