Abstract

Studies on habitat use and habitat selection represent a basic aspect of bird ecology, due to its importance in natural history, distribution, response to environmental changes, management and conservation. Basically, a statistical model that identifies environmental variables linked to a species presence is searched for. In this sense, there is a wide array of analytical methods that identify important explanatory variables within a model, with higher explanatory and predictive power than classical regression approaches. However, some of these powerful models are not widespread in ornithological studies, partly because of their complex theory, and in some cases, difficulties on their implementation and interpretation. Here, I describe generalized linear models and other five statistical models for the analysis of bird habitat use and selection outperforming classical approaches: generalized additive models, mixed effects models, occupancy models, binomial N-mixture models and decision trees (classification and regression trees, bagging, random forests and boosting). Each of these models has its benefits and drawbacks, but major advantages include dealing with non-normal distributions (presence-absence and abundance data typically found in habitat use and selection studies), heterogeneous variances, non-linear and complex relationships among variables, lack of statistical independence and imperfect detection. To aid ornithologists in making use of the methods described, a readable description of each method is provided, as well as a flowchart along with some recommendations to help them decide the most appropriate analysis. The use of these models in ornithological studies is encouraged, given their huge potential as statistical tools in bird ecology.

Highlights

  • Habitat use and selection has emerged as a basic aspect of bird ecology, due to its importance in natural history, distribution, response to environmental changes, management and conservation of bird species (Cody 1985, Guisan & Thuiller 2005, Engler et al 2017)

  • Habitat selection refers to a process, whereas habitat use refers to the pattern resulting from habitat selection (Jones 2001)

  • This review presents powerful tools to model habitat use and habitat selection in ornithological studies

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Summary

REVIEW OF MODELING METHODS

Generalized Linear Models (GLM) extend the classical linear regression approach by allowing different error distributions ( normal) and the inclusion of nonhomogeneous variances (Nelder & Wedderburn 1972). Every GLM has three basic components: (1) an error structure or random component, (2) a linear predictor or systematic component, and (3) a link function. The error structure corresponds to the distribution probability of the residuals (i.e. observed – predicted values), whereas the linear predictor represents the set of environmental ( ) variables. The link function g Yis a function of the response variable that links the error structure with the linear predictor, and makes the function linear (Dobson 2002):

Model selection in bird ecology
HOW TO CHOOSE THE RIGHT MODEL?
Data exploration and model validation
CONCLUDING REMARKS
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