Mining Botnet Behaviors on the Large-Scale Web Application Community

AINA Workshops(2013)

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摘要
Botnets are networks of compromised computers controlled under a common command and control channel. Recognized as one of the most serious security threats on current Internet infrastructure, botnets are often hidden in existing applications, e.g. IRC, HTTP, or peer-to-peer, which makes botnet detection a challenging problem. In this paper we propose a new, centralized, fully-encrypted, botnet system called Weasel. A set of signatures are examined and formalized to differentiate the behaviors of Weasel and normal web applications. Through these signatures, we apply a set of data mining techniques to detect the web based botnet behaviors on a web application community formed on a campus backbone network. The proposed approach was evaluated with over 400 thousand flows collected over seven consecutive days on a large scale network and results show the proposed approach successfully detects the botnet flows with a high detection rate and an acceptably low false alarm rate.
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关键词
botnet system,campus backbone network,normal web application,acceptably low false alarm,large-scale web application community,botnet flow,mining botnet behaviors,large scale network,botnet behavior,web application community,high detection rate,botnet,data mining,web services,web applications,servers,web,cryptography,protocols,http,computer network security,internet
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