The hybrid framework of ensemble technique in machine learning for phishing detection
by Akanksha S. Mahajan; Pradnya K. Navale; Vaishnavi V. Patil; Vijay M. Khadse; Parikshit N. Mahalle
International Journal of Information and Computer Security (IJICS), Vol. 21, No. 1/2, 2023

Abstract: The benefit of online systems has been availed by users and cybercrimes alike. Phishing has become a popular cybercrime. Phishing is a significant criminal activity for financial gains. Studies about different machine learning algorithms are a perpetual journey to detect malicious data. There are lots of algorithms proposed for detecting a phishing website. The selection of the best solution for the problem is not an easy task in a phishing domain. In this study, the focus is on experimental study of ensemble learning methods, feature reduction techniques and hybrid approach. In machine learning, for improvement in performance, ensemble learning plays a crucial role. In this study, we do a comparative analysis of bagging, boosting and stacking ensemble learning models and propose a new hybrid model in the phishing domain.

Online publication date: Fri, 26-May-2023

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