Smart Firewall for Phishing Detection Powered by Bio-Inspired Algorithms
Mosleh M. Abualhaj, Sumaya N. Al-Khatib, Ahmad A. Abu-Shareha, Abdallah Hyassat, Mohammad Sh. Daoud
Abstract
Phishing attacks continue to pose significant risks to digital security by exploiting user vulnerabilities through deceptive methods.This paper presents a smart firewall model for phishing detection that leverages bio-inspired algorithms to enhance threat identification and response.The model utilizes the Whale Optimization Algorithm (WOA) and Dragonfly Algorithm (DA) independently for effective feature selection, thereby reducing data dimensionality while retaining critical phishing indicators.These optimized features are then processed by advanced Machine Learning (ML) classifiers-Extra Trees (ET), Random Forest (RF), and K-Nearest Neighbors (KNN)-to rigorously evaluate detection accuracy.Experimental results on the ISCX-URL2016 dataset demonstrate that the combination of WOA with the ETs classifier achieves a superior detection accuracy of 98.86%, precision of 99.50%, recall of 99.50%, F1-Score of 99.50%, outperforming alternative configurations and recent methods.This result highlights the potential of bio-inspired optimization combined with ML to develop intelligent, adaptive firewalls capable of effectively mitigating phishing threats.