Topic Classification of Online News Articles Using Optimized Machine Learning Models

Author:

Daud ShahzadaORCID,Ullah Muti,Rehman AmjadORCID,Saba Tanzila,Damaševičius RobertasORCID,Sattar Abdul

Abstract

Much news is available online, and not all is categorized. A few researchers have carried out work on news classification in the past, and most of the work focused on fake news identification. Most of the work performed on news categorization is carried out on a benchmark dataset. The problem with the benchmark dataset is that model trained with it is not applicable in the real world as the data are pre-organized. This study used machine learning (ML) techniques to categorize online news articles as these techniques are cheaper in terms of computational needs and are less complex. This study proposed the hyperparameter-optimized support vector machines (SVM) to categorize news articles according to their respective category. Additionally, five other ML techniques, Stochastic Gradient Descent (SGD), Random Forest (RF), Logistic Regression (LR), K-Nearest Neighbor (KNN), and Naïve Bayes (NB), were optimized for comparison for the news categorization task. The results showed that the optimized SVM model performed better than other models, while without optimization, its performance was worse than other ML models.

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

Reference54 articles.

1. Determinants of News Content;Karlsson;J. Stud.,2012

2. Mitchell, A., and Rosenstiel, T. (2022, January 08). Navigating News Online: Where People Go, How They Get There and What Lures Them Away. PEW Research Center’s Project for Excellence in Journalism. Available online: http://www.journalism.org/2011/05/09/navigatingnewsonline/.

3. Online Persian/Arabic script classification without contextual information;Harouni;Imaging Sci. J.,2014

4. Bakshy, E., Rosenn, I., Marlow, C., and Adamic, L. (2012, January 16–20). The Role of Social Networks in Information Diffusion. Proceedings of the WWW 2012: 21st World Wide Web Conference, Lyon, France.

5. A New Era of Minimal Effects? The Changing Foundations of Political Communication;Bennett;J. Commun.,2008

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