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Quantum-Inspired Immune Evolutionary Algorithm based Parameter Optimization for Mixtures of Kernels and Its Application to Supervised Anomaly IDSs

机译:基于量子的免疫进化算法基于核心混合物的参数优化及其在监督异常IDS中的应用

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Supervised anomaly intrusion detection systems (IDSs) based on Support Vector Machines (SVMs) classification technique have attracted much more attention today. In these systems, features of instances and the characteristic of kernels have great influence on learning and predict results. However, selecting feasible features and kernel parameters can be time-consuming as the number of features and the parameters of kernel increase. In this paper, a quantum-inspired immune evolutionary algorithm (QIEA) based parameter optimization approach is introduced to solve these problems. The mixtures of kernels are used for improving the learning and predict performance of SVM. At the same time, the real-coded chaotic QIEA is used for optimizing the parameters of mixtures of kernels. The KDDCup'99 dataset was used for performance comparison and the experiment results show that the proposed method is efficient competent with the Differential Evolution Algorithm (DEA).
机译:基于支持向量机(SVMS)分类技术的监督异常入侵检测系统(IDS)今天引起了更多的关注。在这些系统中,实例的特征和内核的特征对学习和预测结果产生了很大的影响。但是,选择可行的功能和内核参数可以耗时,因为内核的特征数和参数增加。本文介绍了一种量子启发的免疫进化算法(QIEA)基于参数优化方法来解决这些问题。核的混合物用于改善学习和预测SVM的性能。同时,实际编码的混沌QIEA用于优化核混合物的参数。 KDDCUP'99数据集用于性能比较,实验结果表明,该方法与差分进化算法(DEA)有效。

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