The Gaussian process is a standard tool for building emulators for both deterministic and stochastic computer experiments. However, application of Gaussian process models is greatly limited in practice, particularly for large-scale and many-input computer experiments that have become typical. We propose a multiresolution functional ANOVA (MRFA) model as a computationally feasible emulation alternative. More generally, this model can be used for large-scale and many-input nonlinear regression problems. An overlapping group lasso approach is used for estimation, ensuring computational feasibility in a large-scale and many-input setting. New results on consistency and inference for the (potentially overlapping) group lasso in a high-dimensiona...
Computer models are used as replacements for physical experiments in a wide variety of applications....
Gaussian processes have become essential for non-parametric function estimation and widely used in m...
International audienceComplex computer codes are often too time expensive to be directly used to per...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
© 2018 Operational Research Society Gaussian process (GP) emulation is a relatively recent statistic...
<p>The recent accelerated growth in the computing power has generated popularization of experimentat...
Uncertainty analysis in computer models has seen a rise in interest in recent years as a result of t...
Summary The covariance structure of multivariate functional data can be highly comple...
This dissertation contains two parts. In the first part, we develop backfitting algorithms for doub...
The ability to handle complex data is essential for new research findings and business success today...
With advances in scientific computing and mathematical modeling, complex scientific phenomena such a...
The article describes a new methodology for the emulation of high-order, dynamic simulation models. ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
ABSTRACT. This paper compares two strategies that reduce the cost of running a simulator of the freq...
<p>Our interest is the risk assessment of rare natural hazards, such as</p><p>large volcanic pyrocla...
Computer models are used as replacements for physical experiments in a wide variety of applications....
Gaussian processes have become essential for non-parametric function estimation and widely used in m...
International audienceComplex computer codes are often too time expensive to be directly used to per...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
© 2018 Operational Research Society Gaussian process (GP) emulation is a relatively recent statistic...
<p>The recent accelerated growth in the computing power has generated popularization of experimentat...
Uncertainty analysis in computer models has seen a rise in interest in recent years as a result of t...
Summary The covariance structure of multivariate functional data can be highly comple...
This dissertation contains two parts. In the first part, we develop backfitting algorithms for doub...
The ability to handle complex data is essential for new research findings and business success today...
With advances in scientific computing and mathematical modeling, complex scientific phenomena such a...
The article describes a new methodology for the emulation of high-order, dynamic simulation models. ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
ABSTRACT. This paper compares two strategies that reduce the cost of running a simulator of the freq...
<p>Our interest is the risk assessment of rare natural hazards, such as</p><p>large volcanic pyrocla...
Computer models are used as replacements for physical experiments in a wide variety of applications....
Gaussian processes have become essential for non-parametric function estimation and widely used in m...
International audienceComplex computer codes are often too time expensive to be directly used to per...