可扩展性
计算机科学
粒子群优化
维数之咒
水准点(测量)
进化计算
数学优化
群体行为
计算
人工智能
比例(比率)
元启发式
群体智能
机器学习
数学
算法
物理
数据库
量子力学
地理
大地测量学
作者
Qiang Yang,Wei‐Neng Chen,Jeremiah D. Deng,Yun Li,Tianlong Gu,Jun Zhang
标识
DOI:10.1109/tevc.2017.2743016
摘要
In pedagogy, teachers usually separate mixed-level students into different levels, treat them differently and teach them in accordance with their cognitive and learning abilities. Inspired from this idea, we consider particles in the swarm as mixed-level students and propose a level-based learning swarm optimizer (LLSO) to settle large-scale optimization, which is still considerably challenging in evolutionary computation. At first, a level-based learning strategy is introduced, which separates particles into a number of levels according to their fitness values and treats particles in different levels differently. Then, a new exemplar selection strategy is designed to randomly select two predominant particles from two different higher levels in the current swarm to guide the learning of particles. The cooperation between these two strategies could afford great diversity enhancement for the optimizer. Further, the exploration and exploitation abilities of the optimizer are analyzed both theoretically and empirically in comparison with two popular particle swarm optimizers. Extensive comparisons with several state-of-the-art algorithms on two widely used sets of large-scale benchmark functions confirm the competitive performance of the proposed optimizer in both solution quality and computational efficiency. Finally, comparison experiments on problems with dimensionality increasing from 200 to 2000 further substantiate the good scalability of the developed optimizer.
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