Automated Dataset Generation for Training Peer-to-Peer Machine Learning Classifiers

被引:0
|
作者
Roozbeh Zarei
Alireza Monemi
Muhammad Nadzir Marsono
机构
[1] Universiti Teknologi Malaysia,Faculty of Electrical Engineering
[2] Victoria University,Centre for Applied Informatics, College of Engineering and Science
关键词
Traffic classification; Peer-to-peer traffic; Machine learning; Training dataset; Two-stage classifier;
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暂无
中图分类号
学科分类号
摘要
Peer-to-peer (P2P) classifications based on flow statistics have been proven accurate in detecting P2P traffic. A machine learning classification is affected by the quality and recency of the training dataset used. Hence, to classify P2P traffic on-line requires the removal of these limitations. In this paper, an automated training dataset generation for an on-line P2P traffic classification is proposed to allow frequent classifier retraining. A two-stage training dataset generator (TSTDG) is proposed by combining a 3-class heuristic and a 3-class statistical classification to automatically generate a training dataset. In the heuristic stage, traffic is classified as P2P, non-P2P, or unknown. In the statistical stage, a dual Decision Tree is built based on a dataset generated in the heuristic stage to reduce the amount of classified unknown traffic. The final training dataset is generated based on all flows that are classified in these two stages. The proposed system has been evaluated on traces captured from a campus network. The overall results show that the TSTDG can generate an accurate training dataset by classifying around 94 % of total flows with high accuracy (98.59 %) and a low false positive rate (1.27 %).
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页码:89 / 110
页数:21
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