A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data

Species distributional data based on lattice data often display spatial autocorrelation. In such cases, the assumption of independently and identically distributed errors can be violated in standard regression models. Based on a recently published review on methods to account for spatial autocorr...

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Main Authors: G. Carl, C. F. Dormann, I. Kühn
Format: Article
Language:English
Published: Copernicus Publications 2008-04-01
Series:Web Ecology
Online Access:http://www.web-ecol.net/8/22/2008/we-8-22-2008.pdf
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spelling doaj-a3cbf9dfae894bf584c09b110a76dc102020-11-25T03:46:32ZengCopernicus PublicationsWeb Ecology2193-30811399-11832008-04-0181222910.5194/we-8-22-2008A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional dataG. CarlC. F. DormannI. KühnSpecies distributional data based on lattice data often display spatial autocorrelation. In such cases, the assumption of independently and identically distributed errors can be violated in standard regression models. Based on a recently published review on methods to account for spatial autocorrelation, we describe here a new statistical approach which relies on the theory of wavelets. It provides a powerful tool for removing spatial autocorrelation without any prior knowledge of the underlying correlation structure. Our wavelet-revised model (WRM) is applied to artificial datasets of species’ distributions, for both presence/absence (binary response) and species abundance data (Poisson or normally distributed response). Making use of these published data enables us to compare WRM to other recently tested models and to recommend it as an attractive option for effective and computationally efficient autocorrelation removal.http://www.web-ecol.net/8/22/2008/we-8-22-2008.pdf
collection DOAJ
language English
format Article
sources DOAJ
author G. Carl
C. F. Dormann
I. Kühn
spellingShingle G. Carl
C. F. Dormann
I. Kühn
A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
Web Ecology
author_facet G. Carl
C. F. Dormann
I. Kühn
author_sort G. Carl
title A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
title_short A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
title_full A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
title_fullStr A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
title_full_unstemmed A wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
title_sort wavelet-based method to remove spatial autocorrelation in the analysis of species distributional data
publisher Copernicus Publications
series Web Ecology
issn 2193-3081
1399-1183
publishDate 2008-04-01
description Species distributional data based on lattice data often display spatial autocorrelation. In such cases, the assumption of independently and identically distributed errors can be violated in standard regression models. Based on a recently published review on methods to account for spatial autocorrelation, we describe here a new statistical approach which relies on the theory of wavelets. It provides a powerful tool for removing spatial autocorrelation without any prior knowledge of the underlying correlation structure. Our wavelet-revised model (WRM) is applied to artificial datasets of species’ distributions, for both presence/absence (binary response) and species abundance data (Poisson or normally distributed response). Making use of these published data enables us to compare WRM to other recently tested models and to recommend it as an attractive option for effective and computationally efficient autocorrelation removal.
url http://www.web-ecol.net/8/22/2008/we-8-22-2008.pdf
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