Studying cost-sensitive learning for multi-class imbalance in Internet traffic classification

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作者
LIU Zhen [1 ]
LIU Qiong [2 ]
机构
[1] School of Soft Engineering,South China University of Technology
[2] School of Computer Science and Engineering,South China University of
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Cost-sensitive learning has been applied to resolve the multi-class imbalance problem in Internet traffic classification and it has achieved considerable results.But the classification performance on the minority classes with a few bytes is still unhopeful because the existing research only focuses on the classes with a large amount of bytes.Therefore,the class-dependent misclassification cost is studied.Firstly,the flow rate based cost matrix(FCM) is investigated.Secondly,a new cost matrix named weighted cost matrix(WCM) is proposed,which calculates a reasonable weight for each cost of FCM by regarding the data imbalance degree and classification accuracy of each class.It is able to further improve the classification performance on the difficult minority class(the class with more flows but worse classification accuracy).Experimental results on twelve real traffic datasets show that FCM and WCM obtain more than 92% flow g-mean and 80% byte g-mean on average;on the test set collected one year later,WCM outperforms FCM in terms of stability.
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页数:10
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