Publication | Closed Access
Surrogate Modeling for Bayesian Optimization Beyond a Single Gaussian Process
43
Citations
28
References
2023
Year
Artificial IntelligenceEngineeringMachine LearningModel TuningData SurrogateBayesian RegretHyperparameter EstimationData ScienceBayesian OptimizationUncertainty QuantificationBayesian MethodsRobot LearningPublic HealthBayesian Hierarchical ModelingInverse ProblemsComputer ScienceMonte Carlo SamplingBayesian Surrogate ModelModel OptimizationSurrogate ModelingParameter TuningGaussian ProcessStatistical Inference
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1