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Chaotic antlion algorithm for parameter optimization of support vector machine

机译:支持向量机的参数优化混沌抗杉算法

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摘要

Support Vector Machine (SVM) is one of the well-known classifiers. SVM parameters such as kernel parameters and penalty parameter (C) significantly influence the classification accuracy. In this paper, a novel Chaotic Antlion Optimization (CALO) algorithm has been proposed to optimize the parameters of SVM classifier, so that the classification error can be reduced. To evaluate the proposed algorithm (CALO-SVM), the experiment adopted six standard datasets which are obtained from UCI machine learning data repository. For verification, the results of the CALO-SVM algorithm are compared with grid search, which is a conventional method of searching parameter values, standard Ant Lion Optimization (ALO) SVM, and three well-known optimization algorithms: Genetic Algorithm (GA), Particle Swarm Optimization (PSO), and Social Emotional Optimization Algorithm (SEOA). The experimental results proved that the proposed algorithm is capable of finding the optimal values of the SVM parameters and avoids the local optima problem. The results also demonstrated lower classification error rates compared with GA, PSO, and SEOA algorithms.
机译:支持向量机(SVM)是着名的分类器之一。 SVM参数,如内核参数和惩罚参数(c)显着影响分类准确性。本文提出了一种新的混沌抗杉源(CALO)算法来优化SVM分类器的参数,从而可以减少分类误差。为了评估所提出的算法(Calo-SVM),实验采用了六个标准数据集,该数据集是从UCI机器学习数据存储库获得的。为了验证,将Calo-SVM算法的结果与网格搜索进行比较,这是搜索参数值的传统方法,标准蚂蚁狮子优化(ALO)SVM和三个众所周知的优化算法:遗传算法(GA),粒子群优化(PSO)和社会情感优化算法(SEOA)。实验结果证明,该算法能够找到SVM参数的最佳值,并避免局部最佳问题。与GA,PSO和SEOA算法相比,结果还证明了较低的分类误差率。

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