Rafae Bhatti, Elisa Bertino, et al.
Communications of the ACM
Detecting and mitigating Denial-of-Service (DoS) attacks is crucial for ensuring the availability and security of online services. While various machine learning (ML) models have been utilized for DoS attack detection, there is a need for innovative approaches to improving their performance, especially for the more challenging multi-class detection problem. In this article, we propose adopting a cutting-edge approach called Combinatorial Fusion Analysis (CFA), which leverages a recently developed framework to combine multiple ML models for improved DoS attack detection. Our methodology involves advanced score combination, rank combination, weighted combination techniques, and the diversity strength of scoring systems. Through rigorous performance evaluations, we showcase the efficacy of the combinatorial fusion approach. Our evaluations encompass key metrics such as detection precision, recall, and F1-score, providing comprehensive insights into the interpretability and effectiveness of our approach. We highlight the challenge faced by individual models in classifying low-profiled attacks, while excelling in other attack types. To overcome this limitation, model fusion techniques were used to create a comprehensive model capable of addressing both low-profiled attacks and other traffic types. Furthermore, our findings highlight the potential of this approach for enhancing DoS attack detection capabilities and contributing to the development of more robust defense mechanisms.
Rafae Bhatti, Elisa Bertino, et al.
Communications of the ACM
Liqun Chen, Matthias Enzmann, et al.
FC 2005
Charles H. Bennett, Aram W. Harrow, et al.
IEEE Trans. Inf. Theory
Kaoutar El Maghraoui, Gokul Kandiraju, et al.
WOSP/SIPEW 2010