Gaussian process single-index models as emulators for computer experiments
A single-index model (SIM) provides for parsimonious multidimensional nonlinear regression by combining parametric (linear) projection with univariate nonparametric (nonlinear) regression models. We show that a particular Gaussian process (GP) formulation is simple to work with and ideal as an emula...
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sg-ntu-dr.10356-947382020-03-07T12:37:10Z Gaussian process single-index models as emulators for computer experiments Gramacy, Robert B. Lian, Heng School of Physical and Mathematical Sciences A single-index model (SIM) provides for parsimonious multidimensional nonlinear regression by combining parametric (linear) projection with univariate nonparametric (nonlinear) regression models. We show that a particular Gaussian process (GP) formulation is simple to work with and ideal as an emulator for some types of computer experiment as it can outperform the canonical separable GP regression model commonly used in this setting. Our contribution focuses on drastically simplifying, reinterpreting, and then generalizing a recently proposed fully Bayesian GP-SIM combination. Favorable performance is illustrated on synthetic data and a real-data computer experiment. Two R packages, both released on CRAN, have been augmented to facilitate inference under our proposed model(s). 2013-07-18T06:23:48Z 2019-12-06T19:01:15Z 2013-07-18T06:23:48Z 2019-12-06T19:01:15Z 2012 2012 Journal Article Gramacy, R. B., & Lian, H. (2012). Gaussian Process Single-Index Models as Emulators for Computer Experiments. Technometrics, 54(1), 30-41. https://hdl.handle.net/10356/94738 http://hdl.handle.net/10220/11876 10.1080/00401706.2012.650527 en Technometrics © 2012 American Statistical Association and the American Society for Quality. |
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A single-index model (SIM) provides for parsimonious multidimensional nonlinear regression by combining parametric (linear) projection with univariate nonparametric (nonlinear) regression models. We show that a particular Gaussian process (GP) formulation is simple to work with and ideal as an emulator for some types of computer experiment as it can outperform the canonical separable GP regression model commonly used in this setting. Our contribution focuses on drastically simplifying, reinterpreting, and then generalizing a recently proposed fully Bayesian GP-SIM combination. Favorable performance is illustrated on synthetic data and a real-data computer experiment. Two R packages, both released on CRAN, have been augmented to facilitate inference under our proposed model(s). |
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School of Physical and Mathematical Sciences |
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School of Physical and Mathematical Sciences Gramacy, Robert B. Lian, Heng |
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Gramacy, Robert B. Lian, Heng |
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Gramacy, Robert B. Lian, Heng Gaussian process single-index models as emulators for computer experiments |
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Gramacy, Robert B. |
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Gaussian process single-index models as emulators for computer experiments |
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Gaussian process single-index models as emulators for computer experiments |
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Gaussian process single-index models as emulators for computer experiments |
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Gaussian process single-index models as emulators for computer experiments |
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Gaussian process single-index models as emulators for computer experiments |
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gaussian process single-index models as emulators for computer experiments |
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2013 |
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https://hdl.handle.net/10356/94738 http://hdl.handle.net/10220/11876 |
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