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A HYBRID METHOD FOR INTRUSION DETECTION WITH GA-BASED FEATURE SELECTION

机译:基于GA的特征选择的混合检测方法。

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Traditional intrusion detection techniques examine all features to detect intrusion or misuse patterns. But all features are not relevant and some of them may be redundant and contribute little to the detection process. Irrelevant and redundant features may lead to complex intrusion detection model as well as poor detection accuracy. In this paper, we propose and investigate a novel hybrid feature selection method to intrusion detection based on fusion of Extension Matrix (EM) and Genetic Algorithm (GA), which employs a combination of EM and GA through genetic operation, and it is capable of building an optimal detection model with only selected important features and their specific values. Experiment results show the achievement of high correct detection rates and tolerable low false positive rates based on benchmark KDD Cup 99 data sets.
机译:传统的入侵检测技术会检查所有功能以检测入侵或滥用模式。但是所有功能都不相关,其中一些功能可能是多余的,对检测过程的贡献很小。不相关和冗余的功能可能会导致复杂的入侵检测模型以及较差的检测准确性。在本文中,我们提出并研究了一种基于扩展矩阵(EM)和遗传算法(GA)融合的入侵检测混合特征选择方法,该方法通过遗传操作将EM和GA结合使用,并且能够仅选择重要特征及其特定值来构建最佳检测模型。实验结果表明,基于基准KDD Cup 99数据集,可以实现较高的正确检测率和较低的误报率。

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