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Physics makes the difference: Bayesian optimization and active learning via augmented Gaussian process
Author(s) -
Maxim Ziatdinov,
Ayana Ghosh,
Sergei V. Kalinin
Publication year - 2022
Publication title -
machine learning science and technology
Language(s) - English
Resource type - Journals
ISSN - 2632-2153
DOI - 10.1088/2632-2153/ac4baa
Subject(s) - bayesian optimization , gaussian process , hyperparameter optimization , computer science , prior probability , parametric statistics , machine learning , parameter space , artificial intelligence , grid , mathematical optimization , flexibility (engineering) , univariate , optimization problem , bayesian probability , gaussian , algorithm , mathematics , multivariate statistics , support vector machine , statistics , geometry , quantum mechanics , physics
Both experimental and computational methods for the exploration of structure, functionality, and properties of materials often necessitate the search across broad parameter spaces to discover optimal experimental conditions and regions of interest in the image space or parameter space of computational models. The direct grid search of the parameter space tends to be extremely time-consuming, leading to the development of strategies balancing exploration of unknown parameter spaces and exploitation towards required performance metrics. However, classical Bayesian optimization (BO) strategies based on the Gaussian process (GP) do not readily allow for the incorporation of the known physical behaviors or past knowledge. Here we explore a hybrid optimization/exploration algorithm created by augmenting the standard GP with a structured probabilistic model of the expected system’s behavior. This approach balances the flexibility of the non-parametric GP approach with a rigid structure of physical knowledge encoded into the parametric model. The fully Bayesian treatment of the latter allows additional control over the optimization via the selection of priors for the model parameters. The method is demonstrated for a noisy version of a standard univariate test function used to evaluate optimization algorithms and further extended to physical lattice models. This methodology is expected to be universally suitable for injecting prior knowledge in the form of physical models and past data in the BO framework.

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