Kriging is one of the most widely used emulation methods in simulation. However, memory and time requirements potentially hinder its application to datasets generated by high-dimensional simulators. We borrow from the machine learning literature to propose a new algorithmic implementation of kriging that, while preserving prediction accuracy, notably reduces time and memory requirements. The theoretical and computational foundations of the algorithm are provided. The work then reports results of extensive numerical experiments to compare the performance of the proposed algorithm against current kriging implementations, on simulators of increasing dimensionality. Findings show notable savings in time and memory requirements that allow one to...
When analyzing data from computationally expensive simulation codes, surrogate model-ing methods are...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Kriging or Gaussian process (GP) modeling is an interpolation method that assumes the outputs (respo...
Kriging is one of the most widely used emulation methods in simulation. However, memory and time req...
Stochastic kriging has been widely employed for simulation metamodeling to predict the response surf...
During the last years, kriging has become one of the most popular methods in computer simulation and...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
Abstract in Undeterminedpatial data sets are analysed in many scientific disciplines. Kriging, i.e. ...
Computer simulations are often used to replace physical experiments aimed at exploring the complex r...
<div><p>Kriging is commonly used for developing emulators as surrogates for computationally intensiv...
International audienceEngineering computer codes are often compu- tationally expensive. To lighten t...
The surrogate modelling technique known as Kriging, and its various derivatives, requires an optimiz...
The Kriging surrogate model in complex simulation problems uses as few expensive objectives as possi...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
When analyzing data from computationally expensive simulation codes, surrogate model-ing methods are...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Kriging or Gaussian process (GP) modeling is an interpolation method that assumes the outputs (respo...
Kriging is one of the most widely used emulation methods in simulation. However, memory and time req...
Stochastic kriging has been widely employed for simulation metamodeling to predict the response surf...
During the last years, kriging has become one of the most popular methods in computer simulation and...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
Abstract in Undeterminedpatial data sets are analysed in many scientific disciplines. Kriging, i.e. ...
Computer simulations are often used to replace physical experiments aimed at exploring the complex r...
<div><p>Kriging is commonly used for developing emulators as surrogates for computationally intensiv...
International audienceEngineering computer codes are often compu- tationally expensive. To lighten t...
The surrogate modelling technique known as Kriging, and its various derivatives, requires an optimiz...
The Kriging surrogate model in complex simulation problems uses as few expensive objectives as possi...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
When analyzing data from computationally expensive simulation codes, surrogate model-ing methods are...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Kriging or Gaussian process (GP) modeling is an interpolation method that assumes the outputs (respo...