Bayesian Treed Gaussian Process Models With an Application to Computer Modeling
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Abstract
This paper explores nonparametric and semiparametric nonstationary modeling methodologies that couple stationary Gaussian processes and (limiting) linear models with treed partitioning. Partitioning is a simple but effective method for dealing with nonstationarity. Mixing between full Gaussian processes and simple linear models can yield a more parsimonious spatial model while significantly reducing computational effort. The methodological developments and statistical computing details which make this approach efficient are described in detail. Illustrations of our model are given for both synthetic and real datasets. Key words: recursive partitioning, nonstationary spatial model, nonparametric regression,…
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2Topics & keywords
Topics
Keywords
- Booster (rocketry)
- Computer science
- Gaussian process
- Computer experiment
- Rocket (weapon)
- Bayesian probability
- Process (computing)
- Gaussian
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