DocumentCode
124593
Title
An efficient flow-based botnet detection using supervised machine learning
Author
Stevanovic, Matija ; Pedersen, Jesper Melgaard
Author_Institution
Dept. of Electron. Syst., Aalborg Univ., Aalborg, Denmark
fYear
2014
fDate
3-6 Feb. 2014
Firstpage
797
Lastpage
801
Abstract
Botnet detection represents one of the most crucial prerequisites of successful botnet neutralization. This paper explores how accurate and timely detection can be achieved by using supervised machine learning as the tool of inferring about malicious botnet traffic. In order to do so, the paper introduces a novel flow-based detection system that relies on supervised machine learning for identifying botnet network traffic. For use in the system we consider eight highly regarded machine learning algorithms, indicating the best performing one. Furthermore, the paper evaluates how much traffic needs to be observed per flow in order to capture the patterns of malicious traffic. The proposed system has been tested through the series of experiments using traffic traces originating from two well-known P2P botnets and diverse non-malicious applications. The results of experiments indicate that the system is able to accurately and timely detect botnet traffic using purely flow-based traffic analysis and supervised machine learning. Additionally, the results show that in order to achieve accurate detection traffic flows need to be monitored for only a limited time period and number of packets per flow. This indicates a strong potential of using the proposed approach within a future on-line detection framework.
Keywords
computer network security; invasive software; learning (artificial intelligence); peer-to-peer computing; telecommunication traffic; P2P botnets; botnet neutralization; flow-based botnet detection; flow-based traffic analysis; malicious botnet network traffic identification; nonmalicious applications; packet flow; supervised machine learning; Accuracy; Bayes methods; Feature extraction; Protocols; Support vector machines; Training; Vegetation; Botnet; Botnet detection; Machine learning; Traffic analysis; Traffic classification;
fLanguage
English
Publisher
ieee
Conference_Titel
Computing, Networking and Communications (ICNC), 2014 International Conference on
Conference_Location
Honolulu, HI
Type
conf
DOI
10.1109/ICCNC.2014.6785439
Filename
6785439
Link To Document