MAGPI: Multifidelity-Augmented Gaussian Process Inputs for Surrogate Modeling from Scarce Data
arXiv stat.ML / 3/24/2026
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Key Points
- The paper introduces MAGPI, a multifidelity-augmented Gaussian process regression method intended to build accurate surrogate models when high-fidelity training data is scarce.
- It leverages available low-fidelity models to generate additional low-fidelity data, then uses those data to create feature augmentations that expand the effective input space for the Gaussian process.
- MAGPI is designed to combine strengths of existing multifidelity GPR approaches, specifically cokriging and autoregressive estimators.
- Experiments across multiple benchmark test problems show improved predictive accuracy and lower computational cost versus state-of-the-art methods.
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