Statistical Modelling 20 (2) (2020), 171–194

Bayesian residual analysis for spatially correlated data

Viviana GR Lobo,
Department of Statistics,
Federal University of Rio de Janeiro,
Rio de Janeiro,
Brazil.


Thaís CO Fonseca,
Department of Statistics,
Federal University of Rio de Janeiro,
Rio de Janeiro,
Brazil.
e-mail: thais@im.ufrj.br

Abstract:

This work considers residual analysis and predictive techniques for the identification of individual and multiple outliers in geostatistical data. The standardized Bayesian spatial residual is proposed and computed for three competing models: the Gaussian, Student-t and Gaussian-log-Gaussian spatial processes. In this context, the spatial models are investigated regarding their plausibility for datasets contaminated with outliers. The posterior probability of an outlying observation is computed based on the standardized residuals and different thresholds for outlier discrimination are tested. From a predictive point of view, methods such as the conditional predictive ordinate, the predictive concordance and the Savage–Dickey density ratio for hypothesis testing are investigated for identification of outliers in the spatial setting. For illustration, contaminated datasets are considered to assess the performance of the three spatial models for identification of outliers in spatial data. Furthermore, an application to wind speed modelling is presented to illustrate the usefulness of the proposed tools to detect regions with large wind speeds.

Keywords:

Residual analysis; spatial statistics; outlier detection; predictive performance; Bayesian inference; non-Gaussian process.

Downloads:

Example data and code in zipped archive.
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