URL Spam Detection Using Machine Learning Classifiers

Conference paper


Almomani, O., Alsaaidah, O., Abualhaj, M. M., Almaiah, M. A., Almomani, A. and Memon, S. 2025. URL Spam Detection Using Machine Learning Classifiers. 1st International Conference on Computational Intelligence Approaches and Applications (ICCIAA). Jordan Apr - May 2025 IEEE. https://doi.org/10.1109/ICCIAA65327.2025.11013448
AuthorsAlmomani, O., Alsaaidah, O., Abualhaj, M. M., Almaiah, M. A., Almomani, A. and Memon, S.
TypeConference paper
Abstract

Cybersecurity has emerged as one of the most prevalent and significant challenges in recent years due to the advancement of technology. Among the most frequent and hazardous cybersecurity threats are spam URLs (Uniform Resource Locators), which are also one of the most popular methods for user fraud. Users are the victims of this attack, which also steals their data and infects their devices with harmful software. The detection of spam URLs has become very important in protecting the user. Therefore, this study aims to investigate the efficiency of machine learning classifiers in detecting spam URLs. The following machine learning classifiers were chosen: Random Forest, Decision Tree, and SVM. The evaluation was based on the ISCXURL2016 dataset, which is divided into three groups: All Features, Best First Features, and Infogain Features and evaluation matrices were the Accuracy, Precision, Sensitivity, and F-measure. The results obtained showed that Random Forest with All Features is superior to others with an accuracy of 99.75%, Precision of 99.74%, and Sensitivity of 99. 79%, and F-measure 99.76 %.

Year2025
Conference1st International Conference on Computational Intelligence Approaches and Applications (ICCIAA)
PublisherIEEE
Accepted author manuscript
License
File Access Level
Anyone
Publication dates
Online02 Jun 2025
Publication process dates
Submitted05 Feb 2025
Completed30 Apr 2025
Deposited19 Jun 2025
Book title2025 1st International Conference on Computational Intelligence Approaches and Applications (ICCIAA)
ISBN979-8-3315-2365-7
979-8-3315-2366-4
Digital Object Identifier (DOI)https://doi.org/10.1109/ICCIAA65327.2025.11013448
Web address (URL) of conference proceedingshttps://ieeexplore.ieee.org/xpl/conhome/11012670/proceeding
Copyright holder© 2025 IEEE
Copyright informationPersonal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
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Accepted author manuscript
ICCIA 25-URL Spam Detection Using Machine Learning - AAM.pdf
License: All rights reserved
File access level: Anyone

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