DocumentCode :
3447875
Title :
Skype Traffic Classification Using Cost Sensitive Algorithms
Author :
Azab, Abdulrahman ; Layton, Richard ; Alazab, Mostafa ; Watters, Paul
Author_Institution :
Internet Commerce Security Lab. (ICSL), Univ. of Ballarat, Ballarat, VIC, Australia
fYear :
2013
fDate :
21-22 Nov. 2013
Firstpage :
14
Lastpage :
21
Abstract :
Voice over IP (VoIP) technologies such as Skype are becoming increasingly popular and widely used in different organisations, and therefore identifying the usage of this service at the network level becomes very important. Reasons for this include applying Quality of Service (QoS), network planning, prohibiting its use in some networks and lawful interception of communications. Researchers have addressed VoIP traffic classification from different viewpoints, such as classifier accuracy, building time, classification time and online classification. This previous research tested their models using the same version of a VoIP product they used for training the model, giving generalizability only to that version of the product. This means that as new VoIP versions are released, these classifiers become obsolete. In this paper, we address if this approach is applicable to detecting new, untrained, versions of Skype. We suggest that using cost-sensitive classifiers can help to improve the accuracy of detecting untrained versions, by testing compared to other algorithms. Our experiment demonstrates promising preliminary results to detect Skype version 4, by building a cost sensitive classifier on Skype version 3, achieving an F-measure score of 0.57. This is a drastic improvement from not using cost sensitivity, which scores an F-measure of 0. This approach may be enhanced to improve the detection results and extended to improve detection for other applications that change protocols from version to version.
Keywords :
Internet telephony; pattern classification; quality of service; telecommunication traffic; F-measure scores; QoS; Skype traffic classification; Skype version-3 detection; Skype version-4 detection; VoIP traffic classification; building time; classifier accuracy; cost sensitive algorithms; cost-sensitive classifiers; network level; network planning; online classification time; quality of service; voice over IP technologies; Buildings; Classification algorithms; Feature extraction; Machine learning algorithms; Monitoring; Ports (Computers); Telecommunication traffic; Machine Learning; Network; Security; Skype; VoIP;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Cybercrime and Trustworthy Computing Workshop (CTC), 2013 Fourth
Conference_Location :
Sydney NSW
Print_ISBN :
978-1-4799-3075-3
Type :
conf
DOI :
10.1109/CTC.2013.11
Filename :
6754636
Link To Document :
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