Gaussian process surrogates are a popular alternative to directly using computationally expensive simulation models. When the simulation output consists of many responses, dimension-reduction techniques are often employed to construct these surrogates. However, surrogate methods with dimension reduction generally rely on complete output training data. This article proposes a new Gaussian process surrogate method that permits the use of partially observed output while remaining computationally efficient. The new method involves the imputation of missing values and the adjustment of the covariance matrix used for Gaussian process inference. The resulting surrogate represents the available responses, disregards the missing responses, and provi...
The increased diffusion of complex numerical solvers to emulate physical processes demands the devel...
Surrogate models have been successfully used in likelihood-free inference to decrease the number of ...
For many expensive deterministic computer simulators, the outputs do not have replication error and ...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
The simulation of complex physics models may lead to enormous computer running times. Since the simu...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
2021 Fall.Includes bibliographical references.Surrogate models, trained using a data-driven approach...
A surrogate model is the alternative to an actual test or simulation model that incurs higher costs ...
Time-consuming numerical simulators for solving groundwater flow and dissolution models of physico-c...
Gaussian process (GP) surrogate modeling for large computer experiments is limited by cubic runtimes...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Efficient surrogate modelling of computer models (herein defined as simulators) becomes of increasin...
In this contribution, we propose an algorithm for replacing non-linear process simulation integrated...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The increased diffusion of complex numerical solvers to emulate physical processes demands the devel...
Surrogate models have been successfully used in likelihood-free inference to decrease the number of ...
For many expensive deterministic computer simulators, the outputs do not have replication error and ...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
The simulation of complex physics models may lead to enormous computer running times. Since the simu...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
2021 Fall.Includes bibliographical references.Surrogate models, trained using a data-driven approach...
A surrogate model is the alternative to an actual test or simulation model that incurs higher costs ...
Time-consuming numerical simulators for solving groundwater flow and dissolution models of physico-c...
Gaussian process (GP) surrogate modeling for large computer experiments is limited by cubic runtimes...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Efficient surrogate modelling of computer models (herein defined as simulators) becomes of increasin...
In this contribution, we propose an algorithm for replacing non-linear process simulation integrated...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The increased diffusion of complex numerical solvers to emulate physical processes demands the devel...
Surrogate models have been successfully used in likelihood-free inference to decrease the number of ...
For many expensive deterministic computer simulators, the outputs do not have replication error and ...