On the Use of Machine Learning for Identifying Botnet Network Traffic

Matija Stevanovic, Jens Myrup Pedersen

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

18 Citationer (Scopus)
410 Downloads (Pure)

Abstract

During the last decade significant scientific efforts have been invested in the development of methods that could provide efficient and effective botnet detection. As a result, an array of detection methods based on diverse technical principles and targeting various aspects of botnet phenomena have been defined. As botnets rely on the Internet for both communicating with the attacker as well as for implementing different attack campaigns, network traffic analysis is one of the main means of identifying their existence. In addition to relying on traffic analysis for botnet detection, many contemporary approaches use machine learning techniques for identifying malicious traffic. This paper presents a survey of contemporary botnet detection methods that rely on machine learning for identifying botnet network traffic. The paper provides a comprehensive overview on the existing scientific work thus contributing to the better understanding of capabilities, limitations and opportunities of using machine learning for identifying botnet traffic. Furthermore, the paper outlines possibilities for the future development of machine
learning-based botnet detection systems.
OriginalsprogEngelsk
TidsskriftJournal of Cyber Security and Mobility
Vol/bind4
Udgave nummer2 & 3
Antal sider32
ISSN2245-1439
DOI
StatusUdgivet - 22 jan. 2016
BegivenhedCMI International Conference on Cyber Crime, Cyber Security, Privacy and Trust - AAU CPH, København, Danmark
Varighed: 26 nov. 201527 nov. 2015

Konference

KonferenceCMI International Conference on Cyber Crime, Cyber Security, Privacy and Trust
LokationAAU CPH
Land/OmrådeDanmark
ByKøbenhavn
Periode26/11/201527/11/2015

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