Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology
In this paper we consider generalized linear latent variable models that can handle overdispersed counts and continuous but non-negative data. Such data are common in ecological studies when modelling multivariate abundances or biomass. By extending the standard generalized linear modelling framewor...
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ftanucanberra:oai:openresearch-repository.anu.edu.au:1885/218065 2024-01-14T10:04:44+01:00 Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology Niku, Jenni Warton, David I. Hui, Francis Taskinen, Sara application/pdf http://hdl.handle.net/1885/218065 https://doi.org/10.1007/s13253-017-0304-7 en_AU eng Allen Press Inc 1085-7117 http://hdl.handle.net/1885/218065 doi:10.1007/s13253-017-0304-7 Journal of Agricultural, Biological, and Environmental Statistics Journal article ftanucanberra https://doi.org/10.1007/s13253-017-0304-7 2023-12-15T09:34:52Z In this paper we consider generalized linear latent variable models that can handle overdispersed counts and continuous but non-negative data. Such data are common in ecological studies when modelling multivariate abundances or biomass. By extending the standard generalized linear modelling framework to include latent variables, we can account for any covariation between species not accounted for by the predictors, notably species interactions and correlations driven by missing covariates. We show how estimation and inference for the considered models can be performed efficiently using the Laplace approximation method and use simulations to study the finite-sample properties of the resulting estimates. In the overdispersed count data case, the Laplace-approximated estimates perform similarly to the estimates based on variational approximation method, which is another method that provides a closed form approximation of the likelihood. In the biomass data case, we show that ignoring the correlation between taxa affects the regression estimates unfavourably. To illustrate how our methods can be used in unconstrained ordination and in making inference on environmental variables, we apply them to two ecological datasets: abundances of bacterial species in three arctic locations in Europe and abundances of coral reef species in Indonesia. Article in Journal/Newspaper Arctic Australian National University: ANU Digital Collections Arctic Laplace ENVELOPE(141.467,141.467,-66.782,-66.782) Journal of Agricultural, Biological and Environmental Statistics 22 4 498 522 |
institution |
Open Polar |
collection |
Australian National University: ANU Digital Collections |
op_collection_id |
ftanucanberra |
language |
English |
description |
In this paper we consider generalized linear latent variable models that can handle overdispersed counts and continuous but non-negative data. Such data are common in ecological studies when modelling multivariate abundances or biomass. By extending the standard generalized linear modelling framework to include latent variables, we can account for any covariation between species not accounted for by the predictors, notably species interactions and correlations driven by missing covariates. We show how estimation and inference for the considered models can be performed efficiently using the Laplace approximation method and use simulations to study the finite-sample properties of the resulting estimates. In the overdispersed count data case, the Laplace-approximated estimates perform similarly to the estimates based on variational approximation method, which is another method that provides a closed form approximation of the likelihood. In the biomass data case, we show that ignoring the correlation between taxa affects the regression estimates unfavourably. To illustrate how our methods can be used in unconstrained ordination and in making inference on environmental variables, we apply them to two ecological datasets: abundances of bacterial species in three arctic locations in Europe and abundances of coral reef species in Indonesia. |
format |
Article in Journal/Newspaper |
author |
Niku, Jenni Warton, David I. Hui, Francis Taskinen, Sara |
spellingShingle |
Niku, Jenni Warton, David I. Hui, Francis Taskinen, Sara Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
author_facet |
Niku, Jenni Warton, David I. Hui, Francis Taskinen, Sara |
author_sort |
Niku, Jenni |
title |
Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
title_short |
Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
title_full |
Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
title_fullStr |
Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
title_full_unstemmed |
Generalized Linear Latent Variable Models for Multivariate Count and Biomass Data in Ecology |
title_sort |
generalized linear latent variable models for multivariate count and biomass data in ecology |
publisher |
Allen Press Inc |
url |
http://hdl.handle.net/1885/218065 https://doi.org/10.1007/s13253-017-0304-7 |
long_lat |
ENVELOPE(141.467,141.467,-66.782,-66.782) |
geographic |
Arctic Laplace |
geographic_facet |
Arctic Laplace |
genre |
Arctic |
genre_facet |
Arctic |
op_source |
Journal of Agricultural, Biological, and Environmental Statistics |
op_relation |
1085-7117 http://hdl.handle.net/1885/218065 doi:10.1007/s13253-017-0304-7 |
op_doi |
https://doi.org/10.1007/s13253-017-0304-7 |
container_title |
Journal of Agricultural, Biological and Environmental Statistics |
container_volume |
22 |
container_issue |
4 |
container_start_page |
498 |
op_container_end_page |
522 |
_version_ |
1788059215472885760 |