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Learning non-Gaussian spatial distributions via Bayesian transport maps with parametric shrinkage

28 September 2024
Anirban Chakraborty
Matthias Katzfuss
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Abstract

Many applications, including climate-model analysis and stochastic weather generators, require learning or emulating the distribution of a high-dimensional and non-Gaussian spatial field based on relatively few training samples. To address this challenge, a recently proposed Bayesian transport map (BTM) approach consists of a triangular transport map with nonparametric Gaussian-process (GP) components, which is trained to transform the distribution of interest distribution to a Gaussian reference distribution. To improve the performance of this existing BTM, we propose to shrink the map components toward a ``base'' parametric Gaussian family combined with a Vecchia approximation for scalability. The resulting ShrinkTM approach is more accurate than the existing BTM, especially for small numbers of training samples. It can even outperform the ``base'' family when trained on a single sample of the spatial field. We demonstrate the advantage of ShrinkTM though numerical experiments on simulated data and on climate-model output.

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@article{chakraborty2025_2409.19208,
  title={ Learning non-Gaussian spatial distributions via Bayesian transport maps with parametric shrinkage },
  author={ Anirban Chakraborty and Matthias Katzfuss },
  journal={arXiv preprint arXiv:2409.19208},
  year={ 2025 }
}
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