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Deep learning-based phishing classification framework for accurate detection using optimized URL intelligence.

R Gobinath1, S Manikandan2

  • 1Department of Artificial Intelligence and Data Science, E.G.S. Pillay Engineering College, Nagapattinam, Tamil Nadu, India. gobinath@egspec.org.

Scientific Reports
|April 2, 2026
PubMed
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This study introduces the Adaptive Deep URL Intelligence Network (ADUIN) to combat evolving phishing URL threats. ADUIN enhances phishing detection accuracy and adaptability, significantly reducing false positives and improving zero-day URL identification.

Area of Science:

  • Cybersecurity
  • Machine Learning
  • Network Security

Background:

  • Phishing attacks exploit internet service proliferation using deceptive URLs.
  • Existing detection methods struggle with dynamic, zero-day, and camouflaged phishing URLs due to reliance on static features or blacklists.
  • High false-positive rates and poor scalability limit current phishing detection system performance.

Purpose of the Study:

  • To propose an Adaptive Deep URL Intelligence Network (ADUIN) for intelligent phishing URL detection.
  • To develop a system that overcomes the limitations of traditional rule-based and signature-based detection methods.
  • To enhance the accuracy, adaptability, and scalability of phishing URL classification.

Main Methods:

  • Developed ADUIN, a deep learning model integrating optimized URL lexical, host-based, and structural features.
Keywords:
CybersecurityDeep LearningFeature OptimizationPhishing DetectionURL IntelligenceWebsite Classification

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  • Employed a hybrid relevance-ranking method for feature optimization.
  • Trained a multi-layer deep neural architecture capable of understanding complex, non-linear phishing patterns.
  • Implemented dynamic architecture updates for URL intelligence to adapt to changing attack behaviors.
  • Main Results:

    • ADUIN demonstrated superior accuracy, precision, and recall compared to existing machine learning classifiers on benchmark datasets.
    • Achieved 95% classification accuracy, 93% precision, and a 92% zero-day detection rate with only 3.5% false positives under high load.
    • Optimal accuracy was achieved with 50 features, showing efficient feature utilization.
    • The system exhibited a low delay of 210 ms, suitable for real-time applications.

    Conclusions:

    • ADUIN significantly improves phishing URL classification accuracy, versatility, and intelligence.
    • The proposed system effectively detects zero-day phishing URLs with minimal false alarms.
    • ADUIN offers a robust solution for real-time online and enterprise security, enhancing defenses against sophisticated phishing techniques.