The Usage Analysis of Machine Learning Methods for Intrusion Detection in Software-Defined Networks

Author:

Yiltas-Kaplan Derya1

Affiliation:

1. Istanbul University – Cerrahpaşa, Turkey

Abstract

This chapter focuses on the process of the machine learning with considering the architecture of software-defined networks (SDNs) and their security mechanisms. In general, machine learning has been studied widely in traditional network problems, but recently there have been a limited number of studies in the literature that connect SDN security and machine learning approaches. The main reason of this situation is that the structure of SDN has emerged newly and become different from the traditional networks. These structural variances are also summarized and compared in this chapter. After the main properties of the network architectures, several intrusion detection studies on SDN are introduced and analyzed according to their advantages and disadvantages. Upon this schedule, this chapter also aims to be the first organized guide that presents the referenced studies on the SDN security and artificial intelligence together.

Publisher

IGI Global

Reference18 articles.

1. Flow-based intrusion detection system for SDN.;G. A.Ajaeiya;IEEE Symposium on Computers and Communications (ISCC),2017

2. Braga, R., Mota, E., & Passito, A. (2010). Lightweight DDoS flooding attack detection using NOX/OpenFlow. In IEEE 35th Conference on Local Computer Networks (LCN) (pp. 408-415). IEEE.

3. CIPA: A collaborative intrusion prevention architecture for programmable network and SDN

4. ATLANTIC: A framework for anomaly traffic detection, classification, and mitigation in SDN.;A. S.da Silva;IEEE/IFIP Network Operations and Management Symposium (NOMS),2016

5. Donalek, C. (2011). Supervised and Unsupervised Learning. Retrieved from http://www.astro.caltech.edu/~george/aybi199/Donalek_Classif.pdf

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