Detection of Distributed Denial of Service (DDoS) Attacks Using Computational Intelligence and Majority Vote-Based Ensemble Approach

Author:

Mishra Anupama1,Joshi Bineet Kumar1,Arya Varsha2,Gupta Avadhesh Kumar3ORCID,Chui Kwok Tai4

Affiliation:

1. Himalayan School of Science and Technology, Swami Rama Himalayan University, India

2. Varsha Arya, Insights2Techinfo, India & Lebanese American University, Beirut, Lebanon

3. USCI Karnavati University, India

4. Hong Kong Metropolitan University, China

Abstract

The term “distributed denial of service” (DDoS) refers to one of the most common types of attacks. Sending a huge volume of data packets to the server machine is the target of a DDoS attack. This results in the majority of the consumption of network bandwidth and server, which ultimately leads to an issue with denial of service. In this paper, a majority vote-based ensemble of classifiers is utilized in the Sever technique, which results in improved accuracy and reduced computational overhead, when detecting attacks. For the experiment, the authors have used the CICDDOS2019 dataset. According to the findings of the experiment, a high level of accuracy of 99.98% was attained. In this paper, the classifiers use random forest, decision tree, and naïve bayes for majority voting classifiers, and from the results and performance, it can be seen that majority vote classifiers performed better.

Publisher

IGI Global

Subject

Pharmacology (medical)

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