Optimization of Gaussian Process Models with Evolutionary Algorithms

被引:0
|
作者
Petelin, Dejan [1 ]
Filipic, Bogdan [1 ]
Kocijan, Jus [1 ]
机构
[1] Jozef Stefan Inst, SI-1000 Ljubljana, Slovenia
关键词
Gaussian process models; hyperparameters optimization; evolutionary algorithms;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Gaussian process (GP) models are non-parametric, black-box models that represent a new method for system identification. The optimization of GP models, due to their probabilistic nature, is based on maximization of the probability of the model. This probability can be calculated by the marginal likelihood. Commonly used approaches for maximizing the marginal likelihood of GP models are the deterministic optimization methods. However, their success critically depends on the initial values. In addition, the marginal likelihood function often has a lot of local minima in which the deterministic method can be trapped. Therefore, stochastic optimization methods can be considered as an alternative approach. In this paper we test their applicability in GP model optimization. We performed a comparative study of three stochastic algorithms: the genetic algorithm, differential evolution, and particle swarm optimization. Empirical tests were carried out on a benchmark problem of modeling the concentration of CO2 in the atmosphere. The results indicate that with proper tuning differential evolution and particle swarm optimization significantly outperform the conjugate gradient method.
引用
收藏
页码:420 / 429
页数:10
相关论文
共 50 条
  • [41] Gasification process modelling and optimization using Gaussian process regression and hybrid population-based algorithms
    Si, Hongying
    MULTISCALE AND MULTIDISCIPLINARY MODELING EXPERIMENTS AND DESIGN, 2024, 7 (04) : 4151 - 4171
  • [42] Use of the q-Gaussian mutation in evolutionary algorithms
    Tinos, Renato
    Yang, Shengxiang
    SOFT COMPUTING, 2011, 15 (08) : 1523 - 1549
  • [43] Projection Pursuit Based on Gaussian Mixtures and Evolutionary Algorithms
    Scrucca, Luca
    Serafini, Alessio
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2019, 28 (04) : 847 - 860
  • [44] Use of the q-Gaussian mutation in evolutionary algorithms
    Renato Tinós
    Shengxiang Yang
    Soft Computing, 2011, 15 : 1523 - 1549
  • [45] Biophysical Variable Retrieval of Silage Maize with Gaussian Process Regression and Hyperparameter Optimization Algorithms
    Akbari, Elahe
    Boloorani, Ali Darvishi
    Verrelst, Jochem
    Pignatti, Stefano
    Samany, Najmeh Neysani
    Soufizadeh, Saeid
    Hamzeh, Saeid
    REMOTE SENSING, 2023, 15 (14)
  • [46] Visual Analysis of Evolutionary Optimization Algorithms
    Biswas, Anupam
    Biswas, Bhaskar
    PROCEEDINGS OF 2014 2ND INTERNATIONAL SYMPOSIUM ON COMPUTATIONAL AND BUSINESS INTELLIGENCE (ISCBI), 2014, : 81 - 84
  • [47] An Overview of Evolutionary Algorithms in Multiobjective Optimization
    Fonseca, Carlos M.
    Fleming, Peter J.
    EVOLUTIONARY COMPUTATION, 1995, 3 (01) : 1 - 16
  • [48] Structural optimization using evolutionary algorithms
    Lagaros, ND
    Papadrakakis, M
    Kokossalakis, G
    COMPUTERS & STRUCTURES, 2002, 80 (7-8) : 571 - 589
  • [49] Evolutionary Algorithms and Water Resources Optimization
    Olofintoye, Oluwatosin
    Adeyemo, Josiah
    Otieno, Fred
    EVOLVE - A BRIDGE BETWEEN PROBABILITY, SET ORIENTED NUMERICS, AND EVOLUTIONARY COMPUTATION II, 2013, 175 : 491 - +
  • [50] Global Optimization Software and Evolutionary Algorithms
    Demidova, Anna
    2016 INTERNATIONAL CONFERENCE EDUCATION ENVIRONMENT FOR THE INFORMATION AGE (EEIA-2016), 2016, 29