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      BdryGP: a new Gaussian process model for incorporating boundary information

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          Abstract

          Gaussian processes (GPs) are widely used as surrogate models for emulating computer code, which simulate complex physical phenomena. In many problems, additional boundary information (i.e., the behavior of the phenomena along input boundaries) is known beforehand, either from governing physics or scientific knowledge. While there has been recent work on incorporating boundary information within GPs, such models do not provide theoretical insights on improved convergence rates. To this end, we propose a new GP model, called BdryGP, for incorporating boundary information. We show that BdryGP not only has improved convergence rates over existing GP models (which do not incorporate boundaries), but is also more resistant to the "curse-of-dimensionality" in nonparametric regression. Our proofs make use of a novel connection between GP interpolation and finite-element modeling.

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          Design and Analysis of Computer Experiments

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            High-dimensional integration: The quasi-Monte Carlo way

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              Weak imposition of Dirichlet boundary conditions in fluid mechanics

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                Author and article information

                Journal
                23 August 2019
                Article
                1908.08868
                e82a7fb9-b364-44fa-b0ac-f62b8275301f

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                stat.ME math.ST stat.TH

                Methodology,Statistics theory
                Methodology, Statistics theory

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