A Gradient-Optimized TSK Fuzzy Framework for Explainable Phishing Detection
Journal:
arXiv
Published Date:
Apr 25, 2025
Abstract
Phishing attacks represent an increasingly sophisticated and pervasive threat
to individuals and organizations, causing significant financial losses,
identity theft, and severe damage to institutional reputations. Existing
phishing detection methods often struggle to simultaneously achieve high
accuracy and explainability, either failing to detect novel attacks or
operating as opaque black-box models. To address this critical gap, we propose
a novel phishing URL detection system based on a first-order Takagi-Sugeno-Kang
(TSK) fuzzy inference model optimized through gradient-based techniques. Our
approach intelligently combines the interpretability and human-like reasoning
capabilities of fuzzy logic with the precision and adaptability provided by
gradient optimization methods, specifically leveraging the Adam optimizer for
efficient parameter tuning. Experiments conducted using a comprehensive dataset
of over 235,000 URLs demonstrate rapid convergence, exceptional predictive
performance (accuracy averaging 99.95% across 5 cross-validation folds, with a
perfect AUC i.e. 1.00). Furthermore, optimized fuzzy rules and membership
functions improve interoperability, clearly indicating how the model makes
decisions - an essential feature for cybersecurity applications. This
high-performance, transparent, and interpretable phishing detection framework
significantly advances current cybersecurity defenses, providing practitioners
with accurate and explainable decision-making tools.