Modeling large scale species abundance with latent spatial processes
Avishek Chakraborty, Alan E. Gelfand, Adam M. Wilson, Andrew M., Latimer, John A. Silander Jr

TL;DR
This paper introduces a multi-stage Bayesian hierarchical model to analyze large-scale species abundance in South Africa's Cape Floristic Region, accounting for spatial, environmental, and measurement uncertainties.
Contribution
It develops a novel multi-stage hierarchical Bayesian model that estimates potential and degraded species abundance surfaces over a large region with sparse sampling.
Findings
Able to estimate abundance surfaces despite limited sampling
Incorporates land use and measurement error into the model
Provides a framework for large-scale ecological abundance modeling
Abstract
Modeling species abundance patterns using local environmental features is an important, current problem in ecology. The Cape Floristic Region (CFR) in South Africa is a global hot spot of diversity and endemism, and provides a rich class of species abundance data for such modeling. Here, we propose a multi-stage Bayesian hierarchical model for explaining species abundance over this region. Our model is specified at areal level, where the CFR is divided into roughly one minute grid cells; species abundance is observed at some locations within some cells. The abundance values are ordinally categorized. Environmental and soil-type factors, likely to influence the abundance pattern, are included in the model. We formulate the empirical abundance pattern as a degraded version of the potential pattern, with the degradation effect accomplished in two stages. First, we adjust for…
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