基于多核支持向量机的入侵检测方法

Guanghui Song, Jiankang Guo, Yan Nie
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引用次数: 11

摘要

网络入侵数据具有小样本、非线性、高维等特点,单核支持向量机(SK-SVM)的检测性能不稳定。核函数和相关参数的选择在SK-SVM中起着重要的作用。这极大地影响了SK-SVM的泛化性能。针对SK-SVM的局限性,提出了一种基于多核支持向量机(MK-SVM)的入侵检测方法。MK-SVM可以通过半无限线性规划同时计算核函数和拉格朗日乘子的权重,从而实现核函数的选择和分类器的优化。此外,为了减少该方法所需的时间和空间,我们在输入数据预处理过程中采用了特征选择和聚类方法。基于KDD CUP 1999的实验结果表明,该方法比基于SK-SVM的方法具有更好的适应性和更高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intrusion Detection Method Based on Multiple Kernel Support Vector Machine
Network intrusion data has the characters such as small sample, nonlinear and high dimension, so the detection performance of single kernel support vector machine (SK-SVM) is instability. The choice of kernel function and relative parameters plays an important role in SK-SVM. It greatly influences the generalization performance of SK-SVM. According to the limitation of SK-SVM, in this paper we present an intrusion detection method based on multiple kernel support vector machine (MK-SVM). MK-SVM can calculate the weights of kernel functions and Lagrange multipliers simultaneously through semi-infinite linear programming, and thus achieve the choice of kernel functions and the optimization of classifier. Furthermore, in order to reduce the time and space required of this method, we adopt feature selection and clustering method in the process of input data preprocessing. The experimental results using KDD CUP 1999 show that our method has better adaptability and higher detection accuracy than the method based on SK-SVM.
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