SYN Flood Attack Detection in Cloud Computing using Support Vector Machine
SYN Flood Attack Detection in Cloud Computing using Support Vector Machine
Author(s): Zerina Mašetić, Dino Kečo, Nejdet Doğru, Kemal HajdarevićSubject(s): ICT Information and Communications Technologies
Published by: UIKTEN - Association for Information Communication Technology Education and Science
Keywords: Cloud computing; SYN flood; DoS attack; Support Vector Machine
Summary/Abstract: Cloud computing is a trending technology, as it reduces the cost of running a business. However, many companies are skeptic moving about towards cloud due to the security concerns. Based on the Cloud Security Alliance report, Denial of Service (DoS) attacks are among top 12 attacks in the cloud computing. Therefore, it is important to develop a mechanism for detection and prevention of these attacks. The aim of this paper is to evaluate Support Vector Machine (SVM) algorithm in creating the model for classification of DoS attacks and normal network behaviors. The study was performed in several phases: a) attack simulation, b) data collection, c)feature selection, and d) classification. The proposedmodel achieved 100% classification accuracy with true positive rate (TPR) of 100%. SVM showed outstanding performance in DoS attack detection and proves that it serves as a valuable asset in the network security area.
Journal: TEM Journal
- Issue Year: 6/2017
- Issue No: 4
- Page Range: 752-759
- Page Count: 8
- Language: English