Advancements in Metaverse Security: Phishing Website Detection Through Optimal Feature Selection and Random Forest Classifier

Advancements in Metaverse Security: Phishing Website Detection Through Optimal Feature Selection and Random Forest Classifier

A. V. Senthil Kumar (Hindusthan College of Arts & Science, India), Pavithra Sivakumar (Hindusthan College of Arts & Science, Coimbatore, India), Ankita Chaturvedi (IIS University (Deemed), India), Ismail Bin Musirin (Universiti Teknologi Mara, Malaysia), Venkata Shesha Giridhar Akula (Sphoorthy Engineering College, India), R. V. Suganya (VISTAS, India), G. Vanishree (ICFAI Business School, India), Rajani H. Pillai (Mount Carmel College, India), G. Jagadamba (Siddaganga Institute of Technology, India), Gaganpreet Kaur (Chitkara University, India), Asadi Srinivasulu (University of Newcastle, Australia), and Uma N. Dulhare (Muffakham Jah College of Engineering and Technology, India)
Copyright: © 2024 |Pages: 40
DOI: 10.4018/979-8-3693-3824-7.ch014
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Abstract

This chapter proposes a novel approach for detecting phishing websites within the metaverse, leveraging the Optimal Feature Selection and the Random Forest classifier. This framework addresses the critical challenge of safeguarding users from deceptive tactics in virtual environments. By analyzing website characteristics and identifying the most informative features, the proposed method enhances the accuracy and efficiency of phishing detection in the metaverse, contributing to a more secure and trustworthy virtual landscape. The chapter delves into the methodology, including the chosen feature selection technique and the Random Forest classifier, followed by implementation details, experimental results evaluating the model's performance, and a discussion on the implications for future metaverse security research
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