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A Comparative Statistical Analysis of Machine Learning Models for Suspicious Email Detection

Resource type
Authors/contributors
Title
A Comparative Statistical Analysis of Machine Learning Models for Suspicious Email Detection
Abstract
The increasing volume of suspicious emails, commonly known as spam, has created a critical need for more reliable and robust anti-spam filters. These suspicious emails can be dangerous and can lead to the loss of personal information, underscoring the necessity for an effective spam filtering system. The application of machine learning methods has enhanced system security and improved the detection of suspicious messages. This research evaluates the effectiveness of seven machine learning algorithms for classifying suspicious email messages: random forest, support vector machine, artificial neural network, decision tree, gradient boosting classifier, and k-nearest neighbor. The primary focus of this evaluation is the accuracy achieved by each algorithm in identifying spam emails. Our analysis revealed that the random forest algorithm outperformed the other evaluated algorithms in terms of accuracy for spam email classification, achieving a remarkable 95%. The accuracy percentages of the various methods ranged from 88% to 93%. Copyright 2025. The Korean Institute of Information Scientists and Engineers.
Publication
Journal of Computing Science and Engineering
Publisher
Korean Institute of Information Scientists and Engineers
Date
2025
Volume
19
Issue
4
Pages
117-134
Journal Abbr
J. Comput. Sci. Eng.
Citation Key
shetaComparativeStatisticalAnalysis2025
ISSN
1976-4677
Language
English
Library Catalog
Scopus
Citation
Sheta, A., Pahnehkolaee, N. D., Braik, M., Baareh, A. K. M., Elashmawi, W. H., & Othman, E. S. (2025). A Comparative Statistical Analysis of Machine Learning Models for Suspicious Email Detection. Journal of Computing Science and Engineering, 19(4), 117–134. https://doi.org/10.5626/JCSE.2025.19.4.117
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