Zero-inflated Beta distribution regression modeling
Becky Tang, Henry A Frye, Alan E. Gelfand, John A Silander Jr

TL;DR
This paper introduces a Bayesian zero-inflated Beta regression model to analyze ecological data with many zeros, distinguishing between zeros due to unsuitability and missingness, and incorporating spatial effects for better predictions.
Contribution
It develops a novel hierarchical Bayesian zero-inflated Beta regression model for continuous data with excess zeros, including spatial random effects and new model comparison tools.
Findings
Spatial effects improve predictive accuracy.
Environmental features help distinguish zero types.
Model captures both presence/absence and abundance effectively.
Abstract
A frequent challenge encountered with ecological data is how to interpret, analyze, or model data having a high proportion of zeros. Much attention has been given to zero-inflated count data, whereas models for non-negative continuous data with an abundance of 0s are lacking. We consider zero-inflated data on the unit interval and provide modeling to capture two types of 0s in the context of the Beta regression model. We model 0s due to missing by chance through left censoring of a latent regression, and 0s due to unsuitability using an independent Bernoulli specification to create a point mass at 0. We first develop the model as a spatial regression in environmental features and then extend to introduce spatial random effects. We specify models hierarchically, employing latent variables, fit them within a Bayesian framework, and present new model comparison tools. Our motivating…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Ecology and Vegetation Dynamics Studies · Census and Population Estimation
