gllvm : Fast analysis of multivariate abundance data with generalized linear latent variable models in R

Abstract
1.There has been rapid development in tools for multivariate analysis based on fully specified statistical models or “joint models”. One approach attracting a lot of attention is generalized linear latent variable models (GLLVMs). However, software for fitting these models is typically slow and not practical for large datsets. 2.The R package gllvm offers relatively fast methods to fit GLLVMs via maximum likelihood, along with tools for model checking, visualization and inference. 3.The main advantage of the package over other implementations is speed e.g. being two orders of magnitude faster, and capable of handling thousands of response variables. These advances come from using variational approximations to simplify the likelihood expression to be maximised, automatic differentiation software for model‐fitting (via the TMB package), and careful choice of initial values for parameters. 4.Examples are used to illustrate the main features and functionality of the package, such as constrained or unconstrained ordination, including functional traits in “fourth corner” models, and (if the number of environmental coefficients is not large) make inferences about environmental associations.
Main Authors
Format
Articles Research article
Published
2019
Series
Subjects
Publication in research information system
Publisher
Wiley
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-201909234235Use this for linking
Review status
Peer reviewed
ISSN
2041-210X
DOI
https://doi.org/10.1111/2041-210X.13303
Language
English
Published in
Methods in Ecology and Evolution
Citation
  • Niku, J., Hui, F. K., Taskinen, S., & Warton, D. I. (2019). gllvm : Fast analysis of multivariate abundance data with generalized linear latent variable models in R. Methods in Ecology and Evolution, 10(12), 2173-2182. https://doi.org/10.1111/2041-210X.13303
License
In CopyrightOpen Access
Additional information about funding
The work of JN was supported by the Wihuri Foundation. The work of ST was supported by the CRoNoS COST Action IC1408. The work of FKCH and DIW was supported by ustralia Research Council Discovery Project grants (DP180100836 and DP150100823, espectively), FKCH was also supported by an ANU cross disciplinary grant.
Copyright© 2019 The Authors. Methods in Ecology and Evolution © 2019 British Ecological Society

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