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Online traffic classification for malicious flows using efficient machine learning techniques
2021
TELKOMNIKA (Telecommunication Computing Electronics and Control)
The rapid network technology growth causing various network problems, attacks are becoming more sophisticated than defenses. In this paper, we proposed traffic classification by using machine learning technique, and statistical flow features such as five tuples for the training dataset. A rulebased system, Snort is used to identify the severe harmfulness data packets and reduce the training set dimensionality to a manageable size. Comparison of performance between training dataset that consists
doi:10.12928/telkomnika.v19i4.20402
fatcat:zlk6ze6hevgbxjmu24vmxvphv4