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Machine training and parameter settings with social emotional optimization algorithm for support vector machine

机译:支持向量机的社交情感优化算法的机器训练和参数设置

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摘要

Machine training along with the parameter settings significantly influences the performance of support vector machine (SVM). In this paper, the social emotional optimization algorithm (SEOA) characterized by excellent global optimization ability is employed for machine training and parameter settings for SVM. Instead of the quadratic programming problem, machine training for SVM is modeled as a multi-parameter optimization problem which is solved by SEOA. Besides, SEOA is also employed for SVM parameter settings. The kernel function parameter and error penalty parameter of SVM are simultaneously optimized by SEOA. The experiments adopt several real world datasets from the UCI database. The results indicate that training SVM with SEOA is feasible and effective. The trained SVM can achieve high classification accuracy while using fewer support vectors. Compared with cross validation method and PSO, SEOA is higher efficient in parameter settings of SVM.
机译:机器训练以及参数设置会显着影响支持向量机(SVM)的性能。本文将具有良好全局优化能力的社交情绪优化算法(SEOA)用于支持向量机的机器训练和参数设置。代替二次编程问题,将SVM的机器训练建模为SEOA可以解决的多参数优化问题。此外,SEOA还用于SVM参数设置。 SEOA同时优化了SVM的内核功能参数和错误惩罚参数。实验采用了来自UCI数据库的几个真实世界的数据集。结果表明,用SEOA训练SVM是可行和有效的。经过训练的SVM可以使用较少的支持向量实现较高的分类精度。与交叉验证方法和PSO相比,SEOA在支持向量机的参数设置方面效率更高。

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