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Abstract Geostatistical spatial or spatiotemporal data are common across scientific fields. However, appropriate models to analyse these data, such as generalised linear mixed effects models (GLMMs) with Gaussian Markov random fields (GMRFs), are computationally intensive and challenging for many users to implement. Here, we introduce the R package sdmTMB , which extends the flexible interface familiar to users of lme4, glmmTMB , and mgcv to include spatial and spatiotemporal latent GMRFs using an SPDE-(stochastic partial differential equation) based approach. SPDE matrices are constructed with fmesher and estimation is conducted via maximum marginal likelihood with TMB or via Bayesian inference with tmbstan and rstan . We describe the model and explore case studies that illustrate sdmTMB ’s flexibility in implementing penalised smoothers, non-stationary processes (time-varying and spatially varying coefficients), hurdle models, cross-validation and anisotropy (directionally dependent spatial correlation). Finally, we compare the functionality, speed, and interfaces of related software, demonstrating that sdmTMB can be an order of magnitude faster than R- INLA . We hope sdmTMB will help open this useful class of models to a wider field of geostatistical analysts.
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Sean C. Anderson
Eric J. Ward
Philina A. English
National Oceanic and Atmospheric Administration
NOAA National Marine Fisheries Service
Fisheries and Oceans Canada
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Anderson et al. (Sun,) studied this question.
www.synapsesocial.com/papers/6a02c0a9daa0ebdf9f9e3063 — DOI: https://doi.org/10.1101/2022.03.24.485545