Phishing Website Detection With Semantic Features Based on Machine Learning Classifiers: A Comparative Study

The phishing attack is one of the main cybersecurity threats in web phishing and spear phishing. Phishing websites continue to be a problem. One of the main contributions to our study was working and extracting the URL & Domain Identity feature, Abnormal Features, HTML and JavaScript Features, a...

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Bibliographic Details
Published inInternational journal on semantic web and information systems Vol. 18; no. 1; pp. 1 - 24
Main Authors Almomani, Ammar, Alauthman, Mohammad, Shatnawi, Mohd Taib, Alweshah, Mohammed, Alrosan, Ayat, Alomoush, Waleed, Gupta, Brij B
Format Journal Article
LanguageEnglish
Published Hershey IGI Global 01.01.2022
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Summary:The phishing attack is one of the main cybersecurity threats in web phishing and spear phishing. Phishing websites continue to be a problem. One of the main contributions to our study was working and extracting the URL & Domain Identity feature, Abnormal Features, HTML and JavaScript Features, and Domain Features as semantic features to detect phishing websites, which makes the process of classification using those semantic features, more controllable and more effective. The current study used machine learning model algorithms to detect phishing websites, and comparisons were made. We have used 16 machine learning models adopted with 10 semantic features that represent the most effective features for the detection of phishing webpages extracted from two datasets. The GradientBoostingClassifier and RandomForestClassifier had the best accuracy based on the comparison results (i.e., about 97%). In contrast, GaussianNB and the stochastic gradient descent (SGD) classifier represent the lowest accuracy results; 84% and 81% respectively, in comparison with other classifiers.
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ISSN:1552-6283
1552-6291
DOI:10.4018/IJSWIS.297032