Network traffic classification — A comparative study of two common decision tree methods: C4.5 and Random forest

Alhamza Munther, Alabass Alalousi, Shahrul Nizam, R. R. Othman, Mohammed Anbar
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引用次数: 11

Abstract

Network traffic classification gains continuous interesting while many applications emerge on the different kinds of networks with obfuscation techniques. Decision tree is a supervised machine learning method used widely to identify and classify network traffic. In this paper, we introduce a comparative study focusing on two common decision tree methods namely: C4.5 and Random forest. The study offers comparative results in two different factors are accuracy of classification and processing time. C4.5 achieved high percentage of classification accuracy reach to 99.67 for 24000 instances while Random Forest was faster than C4.5 in term of processing time.
网络流量分类-两种常见决策树方法的比较研究:C4.5和随机森林
随着混淆技术在不同类型的网络上的应用越来越多,网络流分类问题日益引起人们的关注。决策树是一种被广泛用于网络流量识别和分类的监督机器学习方法。本文对C4.5和随机森林两种常见的决策树方法进行了比较研究。该研究在分类精度和处理时间两个不同的因素上提供了比较结果。C4.5在24000个实例的分类准确率达到99.67,而Random Forest在处理时间上要快于C4.5。
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