Network traffic classification based on ensemble learning and co-training

被引:0
|
作者
HE HaiTao1
2 Key Laboratory of Digital Life (Sun Yat-sen University)
3 Information and Network Center
机构
基金
中国国家自然科学基金;
关键词
traffic classification; ensemble learning; co-training; network measurement;
D O I
暂无
中图分类号
TP393.07 [];
学科分类号
081201 ; 1201 ;
摘要
Classification of network traffic is the essential step for many network researches. However,with the rapid evolution of Internet applications the effectiveness of the port-based or payload-based identifi-cation approaches has been greatly diminished in recent years. And many researchers begin to turn their attentions to an alternative machine learning based method. This paper presents a novel machine learning-based classification model,which combines ensemble learning paradigm with co-training tech-niques. Compared to previous approaches,most of which only employed single classifier,multiple clas-sifiers and semi-supervised learning are applied in our method and it mainly helps to overcome three shortcomings:limited flow accuracy rate,weak adaptability and huge demand of labeled training set. In this paper,statistical characteristics of IP flows are extracted from the packet level traces to establish the feature set,then the classification model is created and tested and the empirical results prove its feasibility and effectiveness.
引用
收藏
页码:338 / 346
页数:9
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