计算机科学
分类器(UML)
交通分类
互联网
特征选择
机器学习
人工智能
步伐
互联网流量
数据挖掘
精确性和召回率
特征工程
深度学习
万维网
大地测量学
地理
作者
Luigi Grimaudo,Marco Mellia,Elena Baralis
标识
DOI:10.1109/iwcmc.2012.6314248
摘要
Traffic classification is still today a challenging problem given the ever evolving nature of the Internet in which new protocols and applications arise at a constant pace. In the past, so called behavioral approaches have been successfully proposed as valid alternatives to traditional DPI based tools to properly classify traffic into few and coarse classes. In this paper we push forward the adoption of behavioral classifiers by engineering a Hierarchical classifier that allows proper classification of traffic into more than twenty fine grained classes. Thorough engineering has been followed which considers both proper feature selection and testing seven different classification algorithms. Results obtained over actual and large data sets show that the proposed Hierarchical classifier outperforms off-the-shelf non hierarchical classification algorithms by exhibiting average accuracy higher than 90%, with precision and recall that are higher than 95% for most popular classes of traffic.
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