Research intrusion detection based PSO-RBF classifier

Ruzhi Xu, R. An, Xiao-feng Geng
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引用次数: 13

Abstract

In order to improve the accuracy of classification problem in intrusion detection, a hybrid classifier which was composed by KPCA, RBFNN and PSO, has been proposed in this paper. In the hybrid classifier, KPCA was used to reduce the dimensions, RBF was the core classification, and then PSO was used to optimize the parameters for EBFNN. The hybrid classifier used KPCA to extract the core nonlinear characteristics of raw data, introducing PSO to seek parameters overcame the weakness of RBFNN such as easily limit to local minimum points, low recognition rate and poor generalization. Finally the paper has done simulation using the KDDCUP99 data set in the matlab environment. Finally, the effectiveness of hybrid classifier was proved by experiments. Compared with traditional methods, the hybrid classifier has significantly improved the accuracy of classification in intrusion detection.
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研究基于PSO-RBF分类器的入侵检测
为了提高入侵检测中分类问题的准确率,提出了一种由KPCA、RBFNN和粒子群算法(PSO)组成的混合分类器。在混合分类器中,采用KPCA进行降维,RBF作为核心分类,然后采用粒子群算法对EBFNN进行参数优化。混合分类器利用KPCA提取原始数据的核心非线性特征,引入粒子群算法寻找参数,克服了RBFNN容易局限于局部极小点、识别率低、泛化差的缺点。最后利用KDDCUP99数据集在matlab环境下进行了仿真。最后,通过实验验证了混合分类器的有效性。与传统方法相比,混合分类器显著提高了入侵检测中的分类准确率。
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