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Credit-based network management by weighted Fuzzy C-means

机译:基于信用的网络管理由加权模糊C-Manage

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Nowadays network management is no longer limited to the routine maintenance of software and hardware. This paper introduces credit scoring into campus network management systems by weighted Fuzzy C-means clustering and Support Vector Machines (SVMs) predictor. The records of abnormal events on a large campus network over the past two years are obtained and sorted. Improved ReliefF analyzes the weights of five attributes of records before classified by weighted fuzzy C-means clustering into four classes. N-fold method is then employed to train a SVM classifier for prediction. The results indicate that the SVM predictor outperforms our previous system effectively. The classification results also consist with our goal of focused management on a small amount of users and set up reasonable starting scores according to the class the user belongs to.
机译:如今,网络管理不再限于软件和硬件的日常维护。 本文介绍了加权模糊C型群体聚类和支持向量机(SVM)预测器的校园网络管理系统的信用评分。 获得过去两年大型校园网络异常事件的记录,并分类。 改进的Relieff分析了通过加权模糊C-merial集群分为四个类之前的记录的五个属性的权重。 然后采用n折叠方法来训练SVM分类器以进行预测。 结果表明,SVM预测器有效地优于我们先前的系统。 分类结果还包括我们对少量用户的专注管理的目标,并根据用户所属的课程设置合理的起始分数。

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