Publication | Closed Access
Variable Selection for Gaussian Process Models in Computer Experiments
168
Citations
19
References
2006
Year
Bayesian StatisticEngineeringGaussian Spatial ProcessSimulationBayesian InferenceVariable SelectionComputer Screening ExperimentsData ScienceBiostatisticsBayesian MethodsPublic HealthStatisticsBayesian Hierarchical ModelingActive FactorsMonte Carlo SamplingBayesian StatisticsGaussian ProcessProcess ControlStatistical InferenceApproximate Bayesian Computation
AbstractIn many situations, simulation of complex phenomena requires a large number of inputs and is computationally expensive. Identifying the inputs that most impact the system so that these factors can be further investigated can be a critical step in the scientific endeavor. In computer experiments, it is common to use a Gaussian spatial process to model the output of the simulator. In this article we introduce a new, simple method for identifying active factors in computer screening experiments. The approach is Bayesian and only requires the generation of a new inert variable in the analysis; however, in the spirit of frequentist hypothesis testing, the posterior distribution of the inert factor is used as a reference distribution against which the importance of the experimental factors can be assessed. The methodology is demonstrated on an application in material science, a computer experiment from the literature, and simulated examples.KEY WORDS : Computer simulationLatin hypercubeRandom fieldScreeningSpatial process
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