3.9 Article

Bayesian optimization with informative parametric models via sequential Monte Carlo

期刊

DATA-CENTRIC ENGINEERING
卷 3, 期 -, 页码 -

出版社

CAMBRIDGE UNIV PRESS
DOI: 10.1017/dce.2022.5

关键词

Bayesian inference; Bayesian optimization; inverse problems; sequential Monte Carlo

资金

  1. Australian Research Council Industrial Transformation Training Centre in Data Analytics for Resources and the Environment (DARE) [IC190100031]

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Bayesian optimization (BO), using Gaussian process (GP) surrogate models, has been a successful approach to optimize expensive functions. However, GPs lack interpretability and informative power in modeling complex physical phenomena in scientific applications. This article investigates an alternative BO framework using sequential Monte Carlo (SMC) for Bayesian inference with parametric models, and presents experimental results showing its performance improvements over GP-based BO approaches in engineering applications.
Bayesian optimization (BO) has been a successful approach to optimize expensive functions whose prior knowledge can be specified by means of a probabilistic model. Due to their expressiveness and tractable closed-form predictive distributions, Gaussian process (GP) surrogate models have been the default go-to choice when deriving BO frameworks. However, as nonparametric models, GPs offer very little in terms of interpretability and informative power when applied to model complex physical phenomena in scientific applications. In addition, the Gaussian assumption also limits the applicability of GPs to problems where the variables of interest may highly deviate from Gaussianity. In this article, we investigate an alternative modeling framework for BO which makes use of sequential Monte Carlo (SMC) to perform Bayesian inference with parametric models. We propose a BO algorithm to take advantage of SMC's flexible posterior representations and provide methods to compensate for bias in the approximations and reduce particle degeneracy. Experimental results on simulated engineering applications in detecting water leaks and contaminant source localization are presented showing performance improvements over GP-based BO approaches.

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