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Improving Intrusion Detection with Adaptive Support Vector Machines

机译:使用自适应支持向量机改进入侵检测

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摘要

The research topic that this paper is focused on is intrusion detection in critical network infrastructures, where discrimination of normal activity can be easily corrected, but no intrusions should remain undetected. The intrusion detection system presented in this paper is based on support vector machines that classify unknown data instances according both to the feature values and weight factors that represent importance of features towards the classification. The major contribution of the proposed model is significantly decreased false negative rate, even for the minor categories that have a very few instances in the training set, indicating that the proposed model is suitable for aforementioned environments.
机译:本文关注的研究主题是关键网络基础架构中的入侵检测,可以轻松纠正对正常活动的歧视,但任何入侵都不应被发现。本文提出的入侵检测系统基于支持向量机,该支持向量机根据代表特征对分类重要性的特征值和权重因子对未知数据实例进行分类。所提出的模型的主要贡献是显着降低了假阴性率,即使对于训练集中实例很少的次要类别,也表明所提出的模型适用于上述环境。

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