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Scalable kernel convex hull online support vector machine for intelligent network traffic classification

机译:可扩展内核凸船体在线支持向量机智能网络流量分类

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摘要

Online support vector machine (SVM) is an effective learning method in real-time network traffic classification tasks. However, due to its geometric characteristics, the traditional online SVMs are sensitive to noise and class imbalance. In this paper, a scalable kernel convex hull online SVM called SKCHO-SVM is proposed to solve this problem. SKCHO-SVM involves two stages: (1) offline leaning stage, in which the noise points are deleted and initial pin-SVM classifier is bui (2) online updating stage, in which the classifier is updated with newly arrived data points, while carrying out the classification task. The noise deleting strategy and pinball loss function ensure SKCHO-SVM insensitive to noise data flows. Based on the scalable kernel convex hull, a small amount of convex hull vertices are dynamically selected as the training data points in each class, and the obtained scalable kernel convex hull can relieve class imbalance. Theoretical analysis and numerical experiments show that SKCHO-SVM has the distinctive ability of training time and classification performance.
机译:在线支持向量机(SVM)是实时网络流量分类任务中的有效学习方法。然而,由于其几何特征,传统的在线SVM对噪声和类别不平衡敏感。在本文中,提出了一个可扩展的内核凸船在线SVM,称为Skcho-SVM以解决此问题。 Skcho-SVM涉及两个阶段:(1)离线倾斜阶段,其中删除噪声点,构建初始引脚SVM分类器; (2)在线更新阶段,其中分类器以新到达的数据点更新,同时执行分类任务。噪声删除策略和弹性损耗功能可确保对噪声数据流的斯科诺-SVM不敏感。基于可伸缩内核凸壳,少量凸壳顶点被动态地选择为每个类中的训练数据点,所获得的可伸缩内核凸壳可以释放类不平衡。理论分析和数值实验表明,Skcho-SVM具有培训时间和分类性能的独特能力。

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