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An Adaptive Covariance Scaling Estimation of Distribution Algorithm

Author

Listed:
  • Qiang Yang

    (School of Artificial Intelligence, Nanjing University of Information Science and Technology, Nanjing 210044, China)

  • Yong Li

    (School of Artificial Intelligence, Nanjing University of Information Science and Technology, Nanjing 210044, China)

  • Xu-Dong Gao

    (School of Artificial Intelligence, Nanjing University of Information Science and Technology, Nanjing 210044, China)

  • Yuan-Yuan Ma

    (College of Computer and Information Engineering, Henan Normal University, Xinxiang 453007, China)

  • Zhen-Yu Lu

    (School of Artificial Intelligence, Nanjing University of Information Science and Technology, Nanjing 210044, China)

  • Sang-Woon Jeon

    (Department of Electrical and Electronic Engineering, Hanyang University, Ansan 15588, Korea)

  • Jun Zhang

    (Department of Electrical and Electronic Engineering, Hanyang University, Ansan 15588, Korea
    Department of Computer Science and Information Engineering, Chaoyang University of Technology, Taichung 413310, Taiwan)

Abstract

Optimization problems are ubiquitous in every field, and they are becoming more and more complex, which greatly challenges the effectiveness of existing optimization methods. To solve the increasingly complicated optimization problems with high effectiveness, this paper proposes an adaptive covariance scaling estimation of distribution algorithm (ACSEDA) based on the Gaussian distribution model. Unlike traditional EDAs, which estimate the covariance and the mean vector, based on the same selected promising individuals, ACSEDA calculates the covariance according to an enlarged number of promising individuals (compared with those for the mean vector). To alleviate the sensitivity of the parameters in promising individual selections, this paper further devises an adaptive promising individual selection strategy for the estimation of the mean vector and an adaptive covariance scaling strategy for the covariance estimation. These two adaptive strategies dynamically adjust the associated numbers of promising individuals as the evolution continues. In addition, we further devise a cross-generation individual selection strategy for the parent population, used to estimate the probability distribution by combing the sampled offspring in the last generation and the one in the current generation. With the above mechanisms, ACSEDA is expected to compromise intensification and diversification of the search process to explore and exploit the solution space and thus could achieve promising performance. To verify the effectiveness of ACSEDA, extensive experiments are conducted on 30 widely used benchmark optimization problems with different dimension sizes. Experimental results demonstrate that the proposed ACSEDA presents significant superiority to several state-of-the-art EDA variants, and it preserves good scalability in solving optimization problems.

Suggested Citation

  • Qiang Yang & Yong Li & Xu-Dong Gao & Yuan-Yuan Ma & Zhen-Yu Lu & Sang-Woon Jeon & Jun Zhang, 2021. "An Adaptive Covariance Scaling Estimation of Distribution Algorithm," Mathematics, MDPI, vol. 9(24), pages 1-38, December.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:24:p:3207-:d:700328
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    Citations

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    Cited by:

    1. Qiang Yang & Kai-Xuan Zhang & Xu-Dong Gao & Dong-Dong Xu & Zhen-Yu Lu & Sang-Woon Jeon & Jun Zhang, 2022. "A Dimension Group-Based Comprehensive Elite Learning Swarm Optimizer for Large-Scale Optimization," Mathematics, MDPI, vol. 10(7), pages 1-32, March.
    2. Qiang Yang & Yu-Wei Bian & Xu-Dong Gao & Dong-Dong Xu & Zhen-Yu Lu & Sang-Woon Jeon & Jun Zhang, 2022. "Stochastic Triad Topology Based Particle Swarm Optimization for Global Numerical Optimization," Mathematics, MDPI, vol. 10(7), pages 1-39, March.
    3. Qiang Yang & Yufei Jing & Xudong Gao & Dongdong Xu & Zhenyu Lu & Sang-Woon Jeon & Jun Zhang, 2022. "Predominant Cognitive Learning Particle Swarm Optimization for Global Numerical Optimization," Mathematics, MDPI, vol. 10(10), pages 1-35, May.
    4. Qiang Yang & Litao Hua & Xudong Gao & Dongdong Xu & Zhenyu Lu & Sang-Woon Jeon & Jun Zhang, 2022. "Stochastic Cognitive Dominance Leading Particle Swarm Optimization for Multimodal Problems," Mathematics, MDPI, vol. 10(5), pages 1-34, February.

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