Surrogate Modeling for Bayesian Optimization Beyond a Single Gaussian Process

被引:9
作者
Lu, Qin [1 ]
Polyzos, Konstantinos D. [1 ]
Li, Bingcong [1 ]
Giannakis, Georgios B. [1 ]
机构
[1] Univ Minnesota, Dept Elect & Comp Engn, Minneapolis, MN 55455 USA
关键词
Bayesian optimization; Gaussian processes; ensemble learning; Thompson sampling; Bayesian regret analysis;
D O I
10.1109/TPAMI.2023.3264741
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Bayesian optimization (BO) has well-documented merits for optimizing black-box functions with an expensive evaluation cost. Such functions emerge in applications as diverse as hyperparameter tuning, drug discovery, and robotics. BO hinges on a Bayesian surrogate model to sequentially select query points so as to balance exploration with exploitation of the search space. Most existing works rely on a single Gaussian process (GP) based surrogate model, where the kernel function form is typically preselected using domain knowledge. To bypass such a design process, this paper leverages an ensemble (E) of GPs to adaptively select the surrogate model fit on-the-fly, yielding a GP mixture posterior with enhanced expressiveness for the sought function. Acquisition of the next evaluation input using this EGP-based function posterior is then enabled by Thompson sampling (TS) that requires no additional design parameters. To endow function sampling with scalability, random feature-based kernel approximation is leveraged per GP model. The novel EGP-TS readily accommodates parallel operation. To further establish convergence of the proposed EGP-TS to the global optimum, analysis is conducted based on the notion of Bayesian regret for both sequential and parallel settings. Tests on synthetic functions and real-world applications showcase the merits of the proposed method.
引用
收藏
页码:11283 / 11296
页数:14
相关论文
共 50 条
  • [21] Physics makes the difference: Bayesian optimization and active learning via augmented Gaussian process
    Ziatdinov, Maxim A.
    Ghosh, Ayana
    Kalinin, Sergei, V
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2022, 3 (01):
  • [22] Gaussian process-based Bayesian optimization for data-driven unit commitment
    Nikolaidis, Pavlos
    Chatzis, Sotirios
    INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2021, 130
  • [23] LiDAR-Guided Stereo Matching Using Bayesian Optimization With Gaussian Process Regression
    Yi, Hao
    Liu, Bo
    Zhao, Bin
    Liu, Enhai
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2024, 21
  • [24] Bayes_Opt-SWMM: : A Gaussian process-based Bayesian optimization tool for real-time flood modeling with SWMM
    Tanim, Ahad Hasan
    Smith-Lewis, Corinne
    Downey, Austin R. J.
    Imran, Jasim
    Goharian, Erfan
    ENVIRONMENTAL MODELLING & SOFTWARE, 2024, 179
  • [25] Flow characteristic optimization of a multi-stage orifice plate using surrogate-based modeling and Bayesian optimization
    Tengfei Tang
    Lei Lei
    Li Xiao
    Yili Peng
    Hongjian Zhou
    Structural and Multidisciplinary Optimization, 2023, 66
  • [26] Flow characteristic optimization of a multi-stage orifice plate using surrogate-based modeling and Bayesian optimization
    Tang, Tengfei
    Lei, Lei
    Xiao, Li
    Peng, Yili
    Zhou, Hongjian
    STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2023, 66 (08)
  • [27] Gaussian Process Surrogate Models for the CMA Evolution Strategy
    Bajer, Lukas
    Pitra, Zbynek
    Repicky, Jakub
    Holena, Martin
    EVOLUTIONARY COMPUTATION, 2019, 27 (04) : 665 - 697
  • [28] BAYESIAN OPTIMIZATION WITH GAUSSIAN PROCESSES FOR ROBUST LOCALIZATION
    Jenkins, William F., II
    Gerstoft, Peter
    2024 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, ICASSP 2024, 2024, : 6010 - 6014
  • [29] Self-optimizing grinding machines using Gaussian process models and constrained Bayesian optimization
    Markus Maier
    Alisa Rupenyan
    Christian Bobst
    Konrad Wegener
    The International Journal of Advanced Manufacturing Technology, 2020, 108 : 539 - 552
  • [30] Improving SWATH Seakeeping Performance using Multi-Fidelity Gaussian Process and Bayesian Optimization
    Bonfiglio, Luca
    Perdikaris, Paris
    Vernengo, Giuliano
    de Medeiros, Joao Seixas
    Karniadakis, George
    JOURNAL OF SHIP RESEARCH, 2018, 62 (04): : 223 - 240