A method for assigning species into groups based on generalized Mahalanobis distance between habitat model coefficients

Environmental and Ecological Statistics
By:  and 

Links

Abstract

Habitat association models are commonly developed for individual animal species using generalized linear modeling methods such as logistic regression. We considered the issue of grouping species based on their habitat use so that management decisions can be based on sets of species rather than individual species. This research was motivated by a study of western landbirds in northern Idaho forests. The method we examined was to separately fit models to each species and to use a generalized Mahalanobis distance between coefficient vectors to create a distance matrix among species. Clustering methods were used to group species from the distance matrix, and multidimensional scaling methods were used to visualize the relations among species groups. Methods were also discussed for evaluating the sensitivity of the conclusions because of outliers or influential data points. We illustrate these methods with data from the landbird study conducted in northern Idaho. Simulation results are presented to compare the success of this method to alternative methods using Euclidean distance between coefficient vectors and to methods that do not use habitat association models. These simulations demonstrate that our Mahalanobis-distance- based method was nearly always better than Euclidean-distance-based methods or methods not based on habitat association models. The methods used to develop candidate species groups are easily explained to other scientists and resource managers since they mainly rely on classical multivariate statistical methods. ?? 2008 Springer Science+Business Media, LLC.
Publication type Article
Publication Subtype Journal Article
Title A method for assigning species into groups based on generalized Mahalanobis distance between habitat model coefficients
Series title Environmental and Ecological Statistics
DOI 10.1007/s10651-008-0093-9
Volume 16
Issue 4
Year Published 2009
Language English
Larger Work Type Article
Larger Work Subtype Journal Article
Larger Work Title Environmental and Ecological Statistics
First page 495
Last page 513
Google Analytic Metrics Metrics page
Additional publication details