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MAGPI: Multifidelity-Augmented Gaussian Process Inputs for Surrogate Modeling from Scarce Data

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Supervised machine learning describes the practice of fitting a parameterized model to labeled input-output data. Supervised machine learning methods have demonstrated promise in learning efficient surrogate models that can (partially) replace expensive high-fidelity models, making many-query analyses, such as optimization, uncertainty quantification, and inference, tractable. However, when training data must be obtained through the evaluation of an expensive model or experiment, the amount of training data that can be obtained is often limited, which can make learned surrogate models unreliable. However, in many engineering and scientific settings, cheaper \emph{low-fidelity} models may be available, for example arising from simplified physics modeling or coarse grids. These models may be used to generate additional low-fidelity training data. The goal of \emph{multifidelity} machine learning is to use both high- and low-fidelity training data to learn a surrogate model which is cheaper to evaluate than the high-fidelity model, but more accurate than any available low-fidelity model. This work proposes a new multifidelity training approach for Gaussian process regression which uses low-fidelity data to define additional features that augment the input space of the learned model. The approach unites desirable properties from two separate classes of existing multifidelity GPR approaches, cokriging and autoregressive estimators. Numerical experiments on several test problems demonstrate both increased predictive accuracy and reduced computational cost relative to the state of the art.

Atticus Rex, Elizabeth Qian, David Peterson• 2026

Related benchmarks

TaskDatasetResultRank
Sparse flow-field interpolationHigh-fidelity flow-field
RMSE0.0215
8
Laminar Flame Speed PredictionUSC II 650K unseen (test)
RMSE0.0062
4
Laminar Flame Speed PredictionUSC II 750K (unseen test)
RMSE0.007
4
Laminar Flame Speed PredictionUSC II 850K unseen (test)
RMSE0.0086
4
Surrogate Modeling1-D Analytical (test)
RMSE0.0368
4
Laminar Flame Speed PredictionUSC II 550K (train)
RMSE0.0064
4
Laminar Flame Speed PredictionUSC II
Log ML82.8062
4
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