Journal of Cognitive Human-Computer Interaction
JCHCI
2771-1463
2771-1471
10.54216/JCHCI
https://www.americaspg.com/journals/show/3817
2021
2021
Review of Machine Learning Technique based Prediction Model for Phishing Websites Detection
Research Scholar, Dept. of CSE, Bansal Institute of Science and Technology, Bhopal, India
RishiKesh
RishiKesh
Assistant Professor, Dept. of CSE, Bansal Institute of Science and Technology, Bhopal, India
Twinkle
Sharma
Professor, Dept. of CSE, Bansal Institute of Science and Technology, Bhopal, India
Damodar
Tiwari
Professor, Dept. of CSE, Bansal Institute of Science and Technology, Bhopal, India
Kailash
Patidar
Phishing attacks have emerged as a significant cybersecurity challenge, targeting individuals and organizations by tricking users into revealing sensitive information through deceptive websites. Traditional phishing detection methods, such as blacklists and heuristic-based approaches, struggle to keep pace with the rapid evolution of phishing techniques. Machine learning-based predictive models offer a promising solution by analyzing website attributes, URL structures, and behavioral patterns to distinguish between legitimate and phishing websites. This paper provides a comprehensive review of various machine learning techniques, including decision trees, support vector machines (SVM), random forests, deep learning models, and ensemble methods, employed in phishing website detection. It explores feature selection strategies, dataset characteristics, performance evaluation metrics, and real-world implementation challenges. Furthermore, the study discusses recent advancements such as adversarial resilience, natural language processing (NLP) integration, and real-time phishing detection frameworks. The review highlights existing research gaps and future directions to enhance phishing detection accuracy, scalability, and adaptability in evolving cybersecurity landscapes.
2025
2025
28
33
10.54216/JCHCI.090204
https://www.americaspg.com/articleinfo/25/show/3817