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首页> 外文期刊>Foundations of computing and decision sciences >Analysis of statistical model-based optimization enhancements in Generalized Self-Adapting Particle Swarm Optimization framework
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Analysis of statistical model-based optimization enhancements in Generalized Self-Adapting Particle Swarm Optimization framework

机译:广义自适应粒子群优化框架中统计模型的优化增强分析

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This paper presents characteristics of model-based optimization methods utilized within the Generalized Self-Adapting Particle Swarm Optimization (GA- PSO) - a hybrid global optimization framework proposed by the authors. GAPSO has been designed as a generalization of a Particle Swarm Optimization (PSO) algorithm on the foundations of a large degree of independence of individual particles. GAPSO serves as a platform for studying optimization algorithms in the context of the following research hypothesis: (1) it is possible to improve the performance of an optimization algorithm through utilization of more function samples than standard PSO sample-based memory, (2) combining specialized sampling methods (i.e. PSO, Differential Evolution, model-based optimization) will result in a better algorithm performance than using each of them separately. The inclusion of model-based enhancements resulted in the necessity of extending the GAPSO framework by means of an external samples memory - this enhanced model is referred to as M-GAPSO in the paper. We investigate the features of two model-based optimizers: one utilizing a quadratic function and the other one utilizing a polynomial function. We analyze the conditions under which those model-based approaches provide an effective sampling strategy. Proposed model-based optimizers are evaluated on the functions from the COCO BBOB benchmark set.
机译:本文介绍了在广义自适应粒子群优化(GA-PSO)内使用的基于模型的优化方法的特点 - 作者提出的混合全球优化框架。 Gapso被设计为粒子群优化(PSO)算法的概括在大量独立的单个颗粒的基础上。 Gapso作为研究优化算法的平台,在以下研究假设的上下文中:(1)通过利用比标准PSO样本的存储器的使用更多功能样本可以提高优化算法的性能,(2)组合专用采样方法(即PSO,差分演进,基于模型的优化)将导致更好的算法性能,而不是单独使用它们。包含基于模型的增强导致通过外部样品存储器扩展Gapso框架的必要性 - 该增强型模型在纸上称为M-Gapso。我们研究了两个基于模型的优化器的特征:利用二次函数的功能,以及利用多项式函数的一个。我们分析了基于模型的方法提供了有效的采样策略的条件。在Coco BBOB基准集合中评估了基于模型的优化器。

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