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An Incremental Learning Approach with Support Vector Machine for Network Data Stream Classification Problem

机译:支持向量机的网络数据流分类问题增量学习方法

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Currently, data mining for data streams has gained importance in the network management area. Although many new technologies have been applied in this area, most of them belong to the rule-based style. In order to overcome the weakness of rule-based mode, the learning-based model with incremental learning method was employed. In this study, the model proposed was optimized in Support Vector Machine (SVM) kernel functions selection and the parameters. Apart from this, real world network data sets were used in the experiment to certify the validity of the new model. The experimental result showed that the optimized model can improve the accuracy of classification and reduce the time cost. At the same time, the optimized model was also compared with other models.
机译:当前,用于数据流的数据挖掘在网络管理领域已变得越来越重要。尽管在这一领域已应用了许多新技术,但其中大多数属于基于规则的样式。为了克服基于规则的模式的弱点,采用了增量学习的基于学习的模型。在这项研究中,所提出的模型在支持向量机(SVM)内核功能选择和参数上进行了优化。除此之外,实验中还使用了真实世界的网络数据集来证明新模型的有效性。实验结果表明,优化后的模型可以提高分类的准确性,减少时间成本。同时,还将优化模型与其他模型进行了比较。

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