多群优化
粒子群优化
元启发式
数学优化
进化算法
公制(单位)
人口
超参数
职位(财务)
计算机科学
帝国主义竞争算法
人工神经网络
无导数优化
全局优化
维数(图论)
选择(遗传算法)
优化测试函数
最优化问题
算法
进化计算
进化策略
元优化
人工智能
局部搜索(优化)
国家(计算机科学)
光学(聚焦)
群体行为
机器学习
数学
连续优化
随机搜索
适应性突变
作者
Shiwei Hou,Xiangren Lv,Mi Li,Haoran Sun
标识
DOI:10.1108/ec-02-2025-0117
摘要
Purpose This paper aims to focus on the state-of-the art optimization variants of particle swarm optimization algorithm. Design/methodology/approach A state evaluation method based on two factors is introduced in the MIM-PSO algorithm to monitor the evolutionary state of the population in real-time. Based on four evolutionary states (exploration, exploration, development, and convergence), four different learning strategies were adopted, namely: random particle optimal position learning strategy, center position adaptive learning strategy, multi elite dimension selection strategy, and distance based local position search strategy. In addition, a conditional restart strategy is adopted to help the population escape from local optima. And applied to the hyperparameter optimization of neural network models for performance testing. Findings The algorithm was tested on different dimensional test functions of CEC2017 and CEC2021, and tested on standard databases and engineering applications. The results indicate that MIM-PSO has superior optimization performance, which can balance learning strategies and evolutionary states, and more efficiently find the global optimal solution. Originality/value The MIM-PSO proposed in this study is practical and feasible in solving complex and high-dimensional problems.
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