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CLEI Electronic Journal

versión On-line ISSN 0717-5000

Resumen

BREZO, Félix et al. A Supervised Classification Approach for Detecting Packets Originated in a HTTP-based Botnet. CLEIej [online]. 2013, vol.16, n.3, pp.2-2. ISSN 0717-5000.

The possibilities that the management of a vast amount of computers and/or networks offer is attracting an increasing number of malware writers. In this document, the authors propose a methodology thought to detect malicious botnet traffic, based on the analysis of the packets that flow within the network. This objective is achieved by means of the extraction of the static characteristics of packets, which are lately analysed using supervised machine learning techniques focused on traffic labelling so as to proactively face the huge volume of information nowadays filters work with.

Palabras clave : Botnet; Detection; Machine Learning; Packets; Supervised.

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