基于支持向量机组合的网络安全检测方法

Xiaoqi Gu, Xiaoyong Li
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引用次数: 1

摘要

本文采用组合支持向量机对标准支持向量机进行改进,通过组合不同的核函数来提高支持向量机的学习能力和泛化能力,从而提高组合支持向量机核函数的性能,避免单一预测模型的武断。组合预测模型对结果进行联合决策,使预测更加准确。同时,利用粒子群优化算法克服了支持向量机参数随机性和全局性差的问题。而粒子群算法由于具有全局搜索能力、模型简单、收敛速度快等优点,在处理高维问题时具有很大的优势,本文提出的粒子群优化算法是对粒子群优化算法的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A detection method for network security based on the combination of support vector machine
In this paper, we use a combination of support vector machine to improve the Standard SVM, which combine different kernel functions to improve the SVM' learning ability and generalization ability, thereby improving the performance of a combination SVM kernel function, and avoiding the assertiveness of the single prediction model. Combination forecasting model to make joint decisions on the results, making predictions more accurate. At the same time, taking advantage of Particle swarm optimization algorithm to overcome existing problems: the poor randomness and global of support vector machine parameters. And the particle swarm because of its global search capability, simple model, fast convergence, has a great advantage in dealing with the problem of high dimension, and the Particle swarm optimization in this paper is an improved Particle swarm optimization algorithm.
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