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, ...
1.There has been rapid development in tools for multivariate analysis based on fully specified stati...
A brief review of statistical models for prediction of categorical data is presented, with emphasis ...
Important ecological phenomena are often observed indirectly. Consequently, probabilistic latent var...
The multivariate abundance data consist typically of multiple, correlated species encountered at a s...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
Herliansyah R, Fitria I. 2018. Latent variable models for multi-species counts modeling in ecology. ...
Generalized linear latent variable models (GLLVMs) are a class of methods for analyzing multi-respon...
Generalized linear latent variable models (GLLVMs) are a powerful class of models for understanding ...
Understanding the mechanisms of ecological community dynamics and how they could be affected by envi...
Multivariate spatial data, where multiple responses are simultaneously recorded across spatially ind...
International audienceThe study of ecological systems is often impeded by components that escape per...
[[abstract]]The Laplace method for approximating integrals is a useful technique in a number of rese...
1.There has been rapid development in tools for multivariate analysis based on fully specified stati...
In ecology, understanding the species-area relationship (SARs) is extremely important to determine s...
1.There has been rapid development in tools for multivariate analysis based on fully specified stati...
A brief review of statistical models for prediction of categorical data is presented, with emphasis ...
Important ecological phenomena are often observed indirectly. Consequently, probabilistic latent var...
The multivariate abundance data consist typically of multiple, correlated species encountered at a s...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
Herliansyah R, Fitria I. 2018. Latent variable models for multi-species counts modeling in ecology. ...
Generalized linear latent variable models (GLLVMs) are a class of methods for analyzing multi-respon...
Generalized linear latent variable models (GLLVMs) are a powerful class of models for understanding ...
Understanding the mechanisms of ecological community dynamics and how they could be affected by envi...
Multivariate spatial data, where multiple responses are simultaneously recorded across spatially ind...
International audienceThe study of ecological systems is often impeded by components that escape per...
[[abstract]]The Laplace method for approximating integrals is a useful technique in a number of rese...
1.There has been rapid development in tools for multivariate analysis based on fully specified stati...
In ecology, understanding the species-area relationship (SARs) is extremely important to determine s...
1.There has been rapid development in tools for multivariate analysis based on fully specified stati...
A brief review of statistical models for prediction of categorical data is presented, with emphasis ...
Important ecological phenomena are often observed indirectly. Consequently, probabilistic latent var...