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<b>hetGP</b>: Heteroskedastic Gaussian Process Modeling and Sequential Design in <i>R</i>

Mickaël Binois, Robert B. Gramacy

2021Journal of Statistical Software50 citationsDOIOpen Access PDF

Abstract

An increasing number of time-consuming simulators exhibit a complex noise structure that depends on the inputs. For conducting studies with limited budgets of evaluations, new surrogate methods are required in order to simultaneously model the mean and variance fields. To this end, we present the hetGP package, implementing many recent advances in Gaussian process modeling with input-dependent noise. First, we describe a simple, yet efficient, joint modeling framework that relies on replication for both speed and accuracy. Then we tackle the issue of data acquisition leveraging replication and exploration in a sequential manner for various goals, such as for obtaining a globally accurate model, for optimization, or for contour finding. Reproducible illustrations are provided throughout.

Topics & Concepts

Computer scienceHeteroscedasticityReplication (statistics)Variance (accounting)Noise (video)Process (computing)Gaussian processGaussianSimple (philosophy)AlgorithmMachine learningArtificial intelligenceMathematicsStatisticsPhysicsPhilosophyEpistemologyImage (mathematics)AccountingOperating systemQuantum mechanicsBusinessGaussian Processes and Bayesian InferenceMachine Learning and Data ClassificationAdvanced Multi-Objective Optimization Algorithms
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