A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models
Resource selection functions (RSF) are often developed using satellite (ARGOS) or Global Positioning System (GPS) telemetry datasets, which provide a large amount of highly correlated data. We discuss and compare the use of generalized linear mixed-effects models (GLMM) and generalized estimating eq...
Published in: | Rangifer |
---|---|
Main Authors: | , |
Format: | Article in Journal/Newspaper |
Language: | English |
Published: |
Septentrio Academic Publishing
2012
|
Subjects: | |
Online Access: | https://septentrio.uit.no/index.php/rangifer/article/view/2269 https://doi.org/10.7557/2.32.2.2269 |
id |
ftunitroemsoe:oai:ojs.henry.ub.uit.no:article/2269 |
---|---|
record_format |
openpolar |
spelling |
ftunitroemsoe:oai:ojs.henry.ub.uit.no:article/2269 2023-05-15T18:03:55+02:00 A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models Koper, Nicola Manseau, Micheline 2012-03-08 application/pdf https://septentrio.uit.no/index.php/rangifer/article/view/2269 https://doi.org/10.7557/2.32.2.2269 eng eng Septentrio Academic Publishing https://septentrio.uit.no/index.php/rangifer/article/view/2269/2110 https://septentrio.uit.no/index.php/rangifer/article/view/2269 doi:10.7557/2.32.2.2269 Copyright (c) 2015 Nicola Koper, Micheline Manseau http://creativecommons.org/licenses/by/3.0/ CC-BY Rangifer; Vol 32 (2012): Special Issue No. 20; 195-204 1890-6729 autocorrelation conditional models empirical standard errors GEE generalized estimating equations generalized linear mixed-effects models GLMM k-fold cross validation marginal models info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion 2012 ftunitroemsoe https://doi.org/10.7557/2.32.2.2269 2021-08-16T15:11:17Z Resource selection functions (RSF) are often developed using satellite (ARGOS) or Global Positioning System (GPS) telemetry datasets, which provide a large amount of highly correlated data. We discuss and compare the use of generalized linear mixed-effects models (GLMM) and generalized estimating equations (GEE) for using this type of data to develop RSFs. GLMMs directly model differences among caribou, while GEEs depend on an adjustment of the standard error to compensate for correlation of data points within individuals. Empirical standard errors, rather than model-based standard errors, must be used with either GLMMs or GEEs when developing RSFs. There are several important differences between these approaches; in particular, GLMMs are best for producing parameter estimates that predict how management might influence individuals, while GEEs are best for predicting how management might influence populations. As the interpretation, value, and statistical significance of both types of parameter estimates differ, it is important that users select the appropriate analytical method. We also outline the use of k-fold cross validation to assess fit of these models. Both GLMMs and GEEs hold promise for developing RSFs as long as they are used appropriately. Article in Journal/Newspaper Rangifer University of Tromsø: Septentrio Academic Publishing Rangifer 32 2 195 |
institution |
Open Polar |
collection |
University of Tromsø: Septentrio Academic Publishing |
op_collection_id |
ftunitroemsoe |
language |
English |
topic |
autocorrelation conditional models empirical standard errors GEE generalized estimating equations generalized linear mixed-effects models GLMM k-fold cross validation marginal models |
spellingShingle |
autocorrelation conditional models empirical standard errors GEE generalized estimating equations generalized linear mixed-effects models GLMM k-fold cross validation marginal models Koper, Nicola Manseau, Micheline A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
topic_facet |
autocorrelation conditional models empirical standard errors GEE generalized estimating equations generalized linear mixed-effects models GLMM k-fold cross validation marginal models |
description |
Resource selection functions (RSF) are often developed using satellite (ARGOS) or Global Positioning System (GPS) telemetry datasets, which provide a large amount of highly correlated data. We discuss and compare the use of generalized linear mixed-effects models (GLMM) and generalized estimating equations (GEE) for using this type of data to develop RSFs. GLMMs directly model differences among caribou, while GEEs depend on an adjustment of the standard error to compensate for correlation of data points within individuals. Empirical standard errors, rather than model-based standard errors, must be used with either GLMMs or GEEs when developing RSFs. There are several important differences between these approaches; in particular, GLMMs are best for producing parameter estimates that predict how management might influence individuals, while GEEs are best for predicting how management might influence populations. As the interpretation, value, and statistical significance of both types of parameter estimates differ, it is important that users select the appropriate analytical method. We also outline the use of k-fold cross validation to assess fit of these models. Both GLMMs and GEEs hold promise for developing RSFs as long as they are used appropriately. |
format |
Article in Journal/Newspaper |
author |
Koper, Nicola Manseau, Micheline |
author_facet |
Koper, Nicola Manseau, Micheline |
author_sort |
Koper, Nicola |
title |
A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
title_short |
A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
title_full |
A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
title_fullStr |
A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
title_full_unstemmed |
A guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
title_sort |
guide to developing resource selection functions from telemetry data using generalized estimating equations and generalized linear mixed models |
publisher |
Septentrio Academic Publishing |
publishDate |
2012 |
url |
https://septentrio.uit.no/index.php/rangifer/article/view/2269 https://doi.org/10.7557/2.32.2.2269 |
genre |
Rangifer |
genre_facet |
Rangifer |
op_source |
Rangifer; Vol 32 (2012): Special Issue No. 20; 195-204 1890-6729 |
op_relation |
https://septentrio.uit.no/index.php/rangifer/article/view/2269/2110 https://septentrio.uit.no/index.php/rangifer/article/view/2269 doi:10.7557/2.32.2.2269 |
op_rights |
Copyright (c) 2015 Nicola Koper, Micheline Manseau http://creativecommons.org/licenses/by/3.0/ |
op_rightsnorm |
CC-BY |
op_doi |
https://doi.org/10.7557/2.32.2.2269 |
container_title |
Rangifer |
container_volume |
32 |
container_issue |
2 |
container_start_page |
195 |
_version_ |
1766175135211978752 |