The Automatic Discovery, Identification and Measurement of Botnets

作者: Ian Castle , Eimear Buckley

DOI: 10.1109/SECURWARE.2008.44

关键词:

摘要: The majority of virus, spam and malicious emails are sent through the use a network compromised computers, or botnet. early discovery identification botnet is an important aspect in understanding of, development responses to new threats aimed at email systems their users. In this paper we present novel technique for automatic identification, analysis measurement botnets used deliver email. also describes reference implementation system developed demonstrate these techniques. This has been deployed live environment, shown be highly effective use. Practical applications techniques developed, include improved anti-spam anti-virus systems, presented.

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