LGCROct 24, 2024

Harnessing PU Learning for Enhanced Cloud-based DDoS Detection: A Comparative Analysis

arXiv:2410.18380v23 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

It addresses cloud security by improving DDoS detection with limited labeled data, but is incremental as it applies existing PU learning methods to a new dataset.

This paper tackled DDoS detection in cloud environments using PU learning with four machine learning algorithms, achieving F1 scores over 98% with XGBoost and Random Forest.

This paper explores the application of Positive-Unlabeled (PU) learning for enhanced Distributed Denial-of-Service (DDoS) detection in cloud environments. Utilizing the $\texttt{BCCC-cPacket-Cloud-DDoS-2024}$ dataset, we implement PU learning with four machine learning algorithms: XGBoost, Random Forest, Support Vector Machine, and Naïve Bayes. Our results demonstrate the superior performance of ensemble methods, with XGBoost and Random Forest achieving $F_{1}$ scores exceeding 98%. We quantify the efficacy of each approach using metrics including $F_{1}$ score, ROC AUC, Recall, and Precision. This study bridges the gap between PU learning and cloud-based anomaly detection, providing a foundation for addressing Context-Aware DDoS Detection in multi-cloud environments. Our findings highlight the potential of PU learning in scenarios with limited labeled data, offering valuable insights for developing more robust and adaptive cloud security mechanisms.

Foundations

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