Kriging via variably scaled kernels
arXiv cs.LG / 3/19/2026
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Key Points
- The paper introduces variably scaled kernels to create non-stationary Gaussian processes by explicitly altering the data's correlation structure via a scaling function.
- This approach enables modeling targets with abrupt changes or discontinuities, extending beyond traditional stationary kernels used in Kriging.
- It analyzes predictive uncertainty through the variably scaled kernel power function and relates this construction to classical non-stationary kernels.
- Numerical experiments demonstrate improved reconstruction accuracy and uncertainty estimates that reflect the underlying data structure.
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