On the unbiasedness of Multivariant Optimization Algorithm

Baolei Li, Xinling Shi, Jianhua Chen, Yajie Liu, Qinhu Zhang, Lan-juan Liu, Yufeng Zhang, Danjv Lv
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引用次数: 1

Abstract

Multivariant Optimization Algorithm (MOA) is proposed to effectively solve complex multimodal optimization problems through tracking the history information by multiple variant search groups based on a structure. The proposed method has the ability to locate optimum through global-local search iterations which are carried out by a global exploration group and local exploitation groups which are not only multiple but also variant. In this paper, we study the unbiasedness property of MOA and prove that MOA provides an unbiased estimate of the optimal solution for identification problem on an AR model where the outputs are corrupted by noises. The comparison experiments on the identifications of AR model by (Finite Impulse Response) FIR filter shows that MOA is superior to recursive least squares (RLS) and the particle swarm optimization (PSO) in unbiasedness property.
多变量优化算法的无偏性
提出了基于结构的多变量搜索组跟踪历史信息,有效解决复杂多模态优化问题的多变量优化算法(MOA)。该方法具有全局-局部搜索迭代的能力,全局-局部搜索迭代由多个且不同的全局勘探组和局部开发组进行。在本文中,我们研究了MOA的无偏性,并证明了MOA对输出被噪声破坏的AR模型识别问题的最优解提供了无偏估计。通过有限脉冲响应FIR滤波器识别AR模型的对比实验表明,MOA算法在无偏性方面优于递推最小二乘(RLS)算法和粒子群算法(PSO)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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