Computer simulators can be computationally intensive to run over a large number of input values, as required for optimization and various uncertainty quantification tasks. The standard paradigm for the design and analysis of computer experiments is to employ Gaussian random fields to model computer simulators. Gaussian process models are trained on input-output data obtained from simulation runs at various input values. Following this approach, we propose a sequential design algorithm MICE (mutual information for computer experiments) that adaptively selects the input values at which to run the computer simulator in order to maximize the expected information gain (mutual information) over the input space. The superior computational efficien...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
We investigate the merits of replication, and provide methods for optimal design (including replicat...
This paper presents a greedy Bayesian experimental design criterion for heteroscedastic Gaussian pro...
Investigating uncertainties in computer simulations can be prohibitive in terms of computational cos...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
Computer models or simulators are becoming increasingly common in many fields in science and enginee...
Computer models or simulators are becoming increasingly common in many fields in science and enginee...
Computer models, or simulators, are widely used in a range of scientific fields to aid understanding...
International audienceThis article deals with the sequential design of experiments for (deterministi...
International audienceThis article deals with the sequential design of experiments for (deterministi...
Modern scientific researchers often use complex computer simulation codes for theoretical investigat...
International audienceThis article deals with the sequential design of experiments for (deterministi...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
We investigate the merits of replication, and provide methods for optimal design (including replicat...
This paper presents a greedy Bayesian experimental design criterion for heteroscedastic Gaussian pro...
Investigating uncertainties in computer simulations can be prohibitive in terms of computational cos...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
Computer models or simulators are becoming increasingly common in many fields in science and enginee...
Computer models or simulators are becoming increasingly common in many fields in science and enginee...
Computer models, or simulators, are widely used in a range of scientific fields to aid understanding...
International audienceThis article deals with the sequential design of experiments for (deterministi...
International audienceThis article deals with the sequential design of experiments for (deterministi...
Modern scientific researchers often use complex computer simulation codes for theoretical investigat...
International audienceThis article deals with the sequential design of experiments for (deterministi...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
We investigate the merits of replication, and provide methods for optimal design (including replicat...
This paper presents a greedy Bayesian experimental design criterion for heteroscedastic Gaussian pro...