Exact Bayesian Inference for Geostatistical Models under Preferential Sampling
Douglas Mateus da Silva, Dani Gamerman

TL;DR
This paper introduces an exact Bayesian inference method for geostatistical models under preferential sampling, avoiding approximation errors and enabling precise estimation and prediction.
Contribution
It proposes a minor model modification and an augmented model strategy to achieve exact Bayesian inference in preferential sampling scenarios.
Findings
Good estimation and prediction quality demonstrated in simulations
Method performs favorably compared to approximation-based approaches
Applicable to real datasets with complex preferential sampling
Abstract
Preferential sampling is a common feature in geostatistics and occurs when the locations to be sampled are chosen based on information about the phenomena under study. In this case, point pattern models are commonly used as the probability law for the distribution of the locations. However, analytic intractability of the point process likelihood prevents its direct calculation. Many Bayesian (and non-Bayesian) approaches in non-parametric model specifications handle this difficulty with approximation-based methods. These approximations involve errors that are difficult to quantify and can lead to biased inference. This paper presents an approach for performing exact Bayesian inference for this setting without the need for model approximation. A qualitatively minor change on the traditional model is proposed to circumvent the likelihood intractability. This change enables the use of an…
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Taxonomy
TopicsSoil Geostatistics and Mapping
