Model selection for ecological community data using tree shrinkage priors
Trevor Hefley

TL;DR
This paper introduces a tree shrinkage prior for Bayesian multi-species distribution models that enhances predictive accuracy and simplifies interpretation by reducing the number of parameters through guild-based regularization.
Contribution
The paper presents a novel tree shrinkage prior that improves model regularization and interpretability in ecological community modeling by estimating fewer, more meaningful parameters.
Findings
Increased predictive accuracy with the new prior.
Ability to infer guild structure from data.
Reduced model complexity and improved interpretability.
Abstract
Researchers and managers model ecological communities to infer the biotic and abiotic variables that shape species' ranges, habitat use, and co-occurrence which, in turn, are used to support management decisions and test ecological theories. Recently, species distribution models were developed for and applied to data from ecological communities. Model development and selection for ecological community data is difficult because a high level of complexity is desired and achieved by including numerous parameters, which can degrade predictive accuracy and be challenging to interpret and communicate. Like other statistical models, multi-species distribution models can be overparameterized. Regularization is a technique that optimizes predictive accuracy by shrinking or eliminating model parameters. For Bayesian models, the prior distribution automatically regularizes parameters. We propose a…
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Taxonomy
TopicsSpecies Distribution and Climate Change · Wildlife Ecology and Conservation · Fish Ecology and Management Studies
