A Comparative Analysis of Traditional Machine Learning, Deep Learning and Boosting Algorithms on Phishing URL Detection


연구 분야: Artificial Intelligence



학회: 2024 IEEE International Conference on Computer Vision and Machine Intelligence (CVMI)


초록

Phishing attacks pose a significant threat to user’s data security by using counterfeit Uniform Resource Locators (URLs) that are hard to distinguish from legitimate ones. Machine learning can help identify phishing URLs by analyzing their features. This research work compares phishing detection mechanisms using Machine Learning, Deep Learning, and Boosting techniques, evaluating their accuracy across five datasets. The datasets are: Dataset-1 (Kaggle, 2 class), Dataset-2 (UCI, 2 class), Dataset-3 (Mendeley, 2 class), Dataset-4 (UNB, 5 class) and Dataset-5 (Kaggle, 4 class). The analysis shows that boosting techniques outperform traditional Machine Learning and Deep Learning, achieving detection accuracies of \mathbf{9 7 \%, 9 6 \%, 9 8 \%, 9 8 \%} and 92% across the five datasets respectively.


Author Profile
Arvind Ashok

Department of Computer Science and Engineering B.M.S. College of Engineering Bangalore India

Andorra
Author Profile
Dhiksha Rathis

Department of Computer Science and Engineering B.M.S. College of Engineering Bangalore India

Andorra
Author Profile
Richa Raghavendra

Department of Computer Science and Engineering B.M.S. College of Engineering Bangalore India

Andorra

📄 논문 정보

발행 연도 2024년
인용수 201
출판 국가 Andorra
사이트 IEEE
좋아요 수 0

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