Hybrid Bayesian Smoothing on Surfaces
Matthew Hofkes, Douglas Nychka

TL;DR
This paper introduces a hybrid Bayesian model combining Gaussian and non-Gaussian processes to better capture both smooth and abrupt features in spatial data, especially in climate modeling.
Contribution
It proposes a novel hybrid Bayesian hierarchical model incorporating non-Gaussian processes for rough features, improving modeling of complex spatial patterns over traditional Gaussian processes.
Findings
Hybrid model outperforms Gaussian processes in capturing abrupt transitions.
Normal Jeffrey's prior provides superior performance among scaled mixtures.
Application to climate data improves mean function and uncertainty estimation.
Abstract
Modeling spatial processes that exhibit both smooth and rough features poses a significant challenge. This is especially true in fields where complex physical variables are observed across spatial domains. Traditional spatial techniques, such as Gaussian processes (GPs), are ill-suited to capture sharp transitions and discontinuities in spatial fields. In this paper, we propose a new approach incorporating non-Gaussian processes (NGPs) into a hybrid model which identifies both smooth and rough components. Specifically, we model the rough process using scaled mixtures of Gaussian distributions in a Bayesian hierarchical model (BHM). Our motivation comes from the Community Earth System Model Large Ensemble (CESM-LE), where we seek to emulate climate sensitivity fields that exhibit complex spatial patterns, including abrupt transitions at ocean-land boundaries. We demonstrate that…
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Taxonomy
TopicsBayesian Methods and Mixture Models
