Automated Phishing Classification Model Utilizing Genetic Optimization and Dynamic Weighting Algorithms

Journal of Science Technology and Research (JSTAR) 5 (1):520-530 (2024)
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Abstract

The classification system was evaluated using benchmark phishing datasets, and the results demonstrated a significant improvement in detection accuracy and reduced false positives. The proposed model outperformed traditional machine learning algorithms, showing promise for real-world deployment in phishing detection systems. We conclude with suggestions for future improvements, such as incorporating more behavioral data and deploying the system in realtime monitoring applications.

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