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基于贝叶斯学习的集成流量分类方法
引用本文:汪为汉,唐学文,邓一贵.基于贝叶斯学习的集成流量分类方法[J].计算机工程,2012,38(16):164-166.
作者姓名:汪为汉  唐学文  邓一贵
作者单位:重庆大学计算机学院;重庆大学信息与网络管理中心
摘    要:NB方法条件独立性假设和BAN方法小训练集难以建模。为此,提出一种基于贝叶斯学习的集成流量分类方法。构造单独的NB和BAN分类器,在此基础上利用验证集得到各分类器的权重,通过加权平均组合各分类器的输出,实现网络流量分类。以Moore数据集为实验数据,并与NB方法和BAN方法相比较,结果表明,该方法具有更高的分类准确率和稳定性。

关 键 词:流量分类  朴素贝叶斯  贝叶斯网络增广朴素贝叶斯  实例选择  加权
收稿时间:2011-10-18
修稿时间:2011-12-12

Integrated Traffic Classification Method Based on Bayes Learning
WANG Wei-hana,TANG Xue-wenb,DENG Yi-gui.Integrated Traffic Classification Method Based on Bayes Learning[J].Computer Engineering,2012,38(16):164-166.
Authors:WANG Wei-hana  TANG Xue-wenb  DENG Yi-gui
Affiliation:b(a.College of Computer;b.Center of Information and Network Management,Chongqing University,Chongqing 400030,China)
Abstract:It is difficult to model with the conditional independence assumptions of Naive Bayes(NB) method and the small training set of Bayes Network Augmented Na ve Bayes(BAN) approach.In order to solve this problem,a new classification method is proposed in this paper.This is a combined traffic classification based on instance-based learning.It constructs a separate NB and BAN classifiers and obtains each classifier weight according to the validation set.It obtains the classification of network traffic through weighted average combination of classifier output.Using Moore data set as the experimental data,results show that the ensemble learning method rather than NB method and BAN method has higher classification accuracy and stability.
Keywords:traffic classification  Na ve Bayes(NB)  Bayes Network Augmented Na ve Bayes(BAN)  instance selection  weighing
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