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首页> 外文期刊>The Open Cybernetics & Systemics Journal >Adaptive Learning Rate Elitism Estimation of Distribution Algorithm Combining Chaos Perturbation for Large Scale Optimization
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Adaptive Learning Rate Elitism Estimation of Distribution Algorithm Combining Chaos Perturbation for Large Scale Optimization

机译:结合混沌扰动的分布算法自适应学习速率精英估计的大规模优化

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摘要

Estimation of distribution algorithm (EDA) is a kind of EAs, which is based on the technique of probabilistic model and sampling. Large scale optimization problems are a challenge for the conventional EAs. This paper presents an adaptive learning rate elitism EDA combining chaos perturbation (ALREEDA) to improve the performance of traditional EDA to solve high dimensional optimization problems. The famous elitism strategy is introduced to maintain a good convergent performance of this algorithm. The learning rate of σ (a parameter of probabilistic model) is adaptive in the optimization to enhance the algorithm’s global and local search ability, and the chaos perturbation strategy is used to improve the algorithm’s local search ability. Some simulation experiments are conducted to verify the performance of ALREEDA by seven benchmarks of CEC’08 large scale optimization with dimensions 100, 500 and 1000. The results of ALREEDA are promising on majority of the testing problems, and it is comparable with other EDAs and some other improved EAs.
机译:分布估计算法(EDA)是一种基于概率模型和抽样技术的EA。大规模优化问题是传统EA的挑战。本文提出了一种结合混沌扰动(ALREEDA)的自适应学习率精英EDA,以提高传统EDA的性能,以解决高维优化问题。引入了著名的精英策略,以保持该算法的良好收敛性能。 σ(概率模型的一个参数)的学习速率在优化过程中是自适应的,以增强算法的全局和局部搜索能力,并且采用混沌摄动策略来提高算法的局部搜索能力。进行了一些仿真实验,以通过尺寸为100、500和1000的CEC'08大规模优化的七个基准测试来验证ALREEDA的性能。ALREEDA的结果在大多数测试问题上都是有希望的,并且可以与其他EDA和其他一些改进的EA。

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