DocumentCode
3091294
Title
Using Entropy to Classify Traffic More Deeply
Author
Wang, Yipeng ; Zhang, Zhibin ; Guo, Li ; Li, Shuhao
fYear
2011
fDate
28-30 July 2011
Firstpage
45
Lastpage
52
Abstract
The network community always pays its attention to find better methods for traffic classification, which is crucial for Internet Service Providers (ISPs) to provide better QoS for users. Prior works on traffic classification mainly focus their attentions on dividing Internet traffic into different categories based on application layer protocols (such as HTTP, Bit Torrent etc.). Making traffic classification from another point of view, we divide Internet traffic into different content types. Our technology is an attempt to solve the classification problem of network traffic, which contains unknown and proprietary protocols (i.e., no publicly available protocol specification). In this paper, we design a classifier which can distinguish Internet traffic into different content types using machine learning techniques. Features of our classifier are entropy of consecutive bytes and frequencies of characters. Our method is capable of classifying real-world traces into different content types (including Text, Picture, Audio, Video, Compressed, Base 64-encoded image, Base 64-encoded text and Encrypted). The chief features of our classifier are small computing space (about 1K Bytes) and high classification accuracy (about 81%).
Keywords
Internet; learning (artificial intelligence); protocols; quality of service; telecommunication traffic; 64-encoded image; Audio; Bit Torrent; HTTP; ISP; Internet service providers; Internet traffic; Picture; QoS; Text; Video; machine learning techniques; network community; traffic classification; Accuracy; Cryptography; Entropy; Internet; Machine learning; Payloads; Protocols; entropy vector; file content; machine learning; traffic classification;
fLanguage
English
Publisher
ieee
Conference_Titel
Networking, Architecture and Storage (NAS), 2011 6th IEEE International Conference on
Conference_Location
Dalian, Liaoning
Print_ISBN
978-1-4577-1172-5
Electronic_ISBN
978-0-7695-4509-7
Type
conf
DOI
10.1109/NAS.2011.18
Filename
6005446
Link To Document