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Browsing behavior mimicking attacks on popular web sites for large botnets

conference contribution
posted on 2011-01-01, 00:00 authored by Shui Yu, G Zhao, S Guo, Yang Xiang, A Vasilakos
With the significant growth of botnets, application layer DDoS attacks are much easier to launch using large botnet, and false negative is always a problem for intrusion detection systems in real practice. In this paper, we propose a novel application layer DDoS attack tool, which mimics human browsing behavior following three statistical distributions, the Zipf-like distribution for web page popularity, the Pareto distribution for page request time interval for an individual browser, and the inverse Gaussian distribution for length of browsing path. A Markov model is established for individual bot to generate attack request traffic. Our experiments indicated that the attack traffic that generated by the proposed tool is pretty similar to the real traffic. As a result, the current statistics based detection algorithms will result high false negative rate in general. In order to counter this kind of attacks, we discussed a few preliminary solutions at the end of this paper.

History

Event

International Workshop on Security in Computers, Networking and Communications (1st : 2011 : Shanghai, China)

Pagination

947 - 951

Publisher

IEEE

Location

Shanghai, China

Place of publication

[Shanghai, China]

Start date

2011-04-10

End date

2011-04-15

ISBN-13

9781457702488

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2011, IEEE

Title of proceedings

INFOCOM WKSHPS 2011 : IEEE Conference on Computer Communications Workshops

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