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Tracking Differential Evolution Algorithms: An Adaptive Approach through Multinomial Distribution Tracking with Exponential Forgetting

机译:跟踪差分进化算法:一种通过指数分布遗忘的多项分布跟踪的自适应方法

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摘要

Several Differential Evolution variants with modified search dynamics have been recently proposed, to improve the performance of the method. This work borrows ideas from adaptive filter theory to develop an "online" algorithmic adaptation framework. The proposed framework is based on tracking the parameters of a multinomial distribution to reflect changes in the evolutionary process. As such, we design a multinomial distribution tracker to capture the successful evolution movements of three Differential Evolution algorithms, in an attempt to aggregate their characteristics and their search dynamics. Experimental results on ten benchmark functions and comparisons with five state-of-the-art algorithms indicate that the proposed framework is competitive and very promising.
机译:最近提出了几种具有改进的搜索动力学的差分进化变体,以提高该方法的性能。这项工作借鉴了自适应滤波器理论的思想,以开发“在线”算法自适应框架。所提出的框架是基于跟踪多项式分布的参数以反映进化过程中的变化。因此,我们设计了一个多项式分布跟踪器来捕获三种差分演化算法的成功演化运动,以试图汇总其特征和搜索动态。在十种基准函数上的实验结果以及与五种最新算法的比较表明,所提出的框架具有竞争力并且非常有前途。

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