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A Novel Multi-classification Intrusion Detection Model Based on Relevance Vector Machine

机译:基于关联向量机的新型多分类入侵检测模型

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In view of the problems in the theory of support vector machine (SVM) and intrusion detection model, a new method of multi-classification intrusion detection model based on relevance vector machine (RVM) is proposed. Because RVM is based on Bayesian framework, a priori knowledge of the penalty term is introduced. The RVM algorithm needs less relevance vectors (RVs) (support vectors (SVs) in SVM) and it has better generalization ability than SVM. In order to get better classifier in anomaly detection, we analyze and model RVM algorithm using KDD99 dataset. Firstly, the Principal Components Analysis (PCA) is used to reduce the dimensionality of the feature vectors to enable better analysis of the data. Secondly, a multi-classification intrusion detection model based on relevance vector machine is designed to match these features. Finally, the matching forecast results of this model are achieved. The experiments show that this model has higher detection rate and better computational efficiency.
机译:针对支持向量机理论和入侵检测模型存在的问题,提出了一种基于相关向量机的多分类入侵检测模型新方法。由于RVM基于贝叶斯框架,因此引入了惩罚项的先验知识。 RVM算法需要较少的相关向量(RVs)(SVM中的支持向量(SVs)),并且比SVM具有更好的泛化能力。为了在异常检测中获得更好的分类器,我们使用KDD99数据集对RVM算法进行了分析和建模。首先,使用主成分分析(PCA)来减少特征向量的维数,以便更好地分析数据。其次,设计了基于相关向量机的多分类入侵检测模型以匹配这些特征。最后,获得了该模型的匹配预测结果。实验表明,该模型具有较高的检测率和较好的计算效率。

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