Ojewumi TOOgunleye GOOguntunde BOFolorunsho OFashoto SGOgbu N2022-07-272022-07-27202210.1016/j.sciaf.2022.e011652468-2276https://nerd.ethesis.ng/handle/123456789/375Scientific AfricanThis paper analyses and implements a rule-based approach for phishing detection using the three machine learning models trained on a dataset consisting of fourteen (14) features. The machine learning algorithms are; k-Nearest Neighbor (KNN), Random Forest, and Support Vector Machine (SVM). Among the three algorithms used, it was discovered that Random Forest model proved to deliver the best performance. Rules were extracted from the Random Forest Model and embedded into a Google chrome browser extension called PhishNet. PhishNet is built during the course of this research using web technologies such as HTML, CSS, and Javascript. As a result, PhishNet facilitates highly efficient phishing detection for the web.enPhishingAttackKNNRandom ForestSVMPerformance evaluation of machine learning tools for detection of phishing attacks on web pagesArticle