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An ensemble classification method based on machine learning models for malicious Uniform Resource Locators (URL).

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This study introduces a robust stacking ensemble classifier for detecting malicious URLs, achieving 96.8% accuracy in multi-class classification of phishing, malware, and defacement threats.

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Area of Science:

  • Cybersecurity
  • Machine Learning
  • Network Intrusion Detection

Background:

  • Web applications are crucial for online businesses, but Internet-of-Things (IoT) devices increase network intrusion risks via malicious Uniform Resource Locators (URLs).
  • Malicious URLs facilitate scams, attacks, and fraud, posing significant security challenges.
  • Existing malicious URL detection methods often focus on binary classification and limited datasets, leaving room for improvement.

Purpose of the Study:

  • To propose a robust stacking-based ensemble classifier for multi-class malicious URL detection.
  • To evaluate the classifier's performance on larger datasets, addressing limitations of previous binary classification approaches.
  • To leverage lexical features directly from URLs for identifying malicious websites.

Main Methods:

  • Developed a stacking-based ensemble classifier integrating Random Forest, XGBoost, LightGBM, and CatBoost.
  • Employed lexical features extracted directly from URLs for classification.
  • Utilized Randomized Search for hyperparameter tuning to optimize the ensemble classifier's performance.

Main Results:

  • Individual models achieved high accuracies: Random Forest (93.6%), XGBoost (95.2%), LightGBM (95.7%), and CatBoost (94.8%).
  • The proposed stacking ensemble classifier achieved an average accuracy of 96.8% for multi-class classification.
  • Demonstrated significant results in classifying four classes: phishing, malware, defacement, and benign URLs.

Conclusions:

  • The stacking-based ensemble classifier effectively enhances malicious URL detection accuracy.
  • The proposed method shows robustness and improved performance compared to individual models and previous works.
  • This approach offers a promising solution for identifying diverse types of malicious URLs in cybersecurity.