Order selection and sparsity in latent variable models via the ordered factor LASSO

Generalized linear latent variable models (GLLVMs) offer a general framework for flexibly analyzing data involving multiple responses. When fitting such models, two of the major challenges are selecting the order, that is, the number of factors, and an appropriate structure for the loading matrix, t...

Full description

Bibliographic Details
Published in:Biometrics
Main Authors: Hui, Francis, Tanaka, Emi, Warton, David I.
Format: Article in Journal/Newspaper
Language:English
Published: International Biometrics Society
Subjects:
Online Access:http://hdl.handle.net/1885/220047
https://doi.org/10.1111/biom.12888
https://openresearch-repository.anu.edu.au/bitstream/1885/220047/3/01_Hui_Order_selection_and_sparsity_2018.pdf.jpg
id ftanucanberra:oai:openresearch-repository.anu.edu.au:1885/220047
record_format openpolar
spelling ftanucanberra:oai:openresearch-repository.anu.edu.au:1885/220047 2024-01-14T10:10:51+01:00 Order selection and sparsity in latent variable models via the ordered factor LASSO Hui, Francis Tanaka, Emi Warton, David I. application/pdf http://hdl.handle.net/1885/220047 https://doi.org/10.1111/biom.12888 https://openresearch-repository.anu.edu.au/bitstream/1885/220047/3/01_Hui_Order_selection_and_sparsity_2018.pdf.jpg en_AU eng International Biometrics Society 0006-341X http://hdl.handle.net/1885/220047 doi:10.1111/biom.12888 https://openresearch-repository.anu.edu.au/bitstream/1885/220047/3/01_Hui_Order_selection_and_sparsity_2018.pdf.jpg © 2018, The International Biometric Society Biometrics Journal article ftanucanberra https://doi.org/10.1111/biom.12888 2023-12-15T09:39:11Z Generalized linear latent variable models (GLLVMs) offer a general framework for flexibly analyzing data involving multiple responses. When fitting such models, two of the major challenges are selecting the order, that is, the number of factors, and an appropriate structure for the loading matrix, typically a sparse structure. Motivated by the application of GLLVMs to study marine species assemblages in the Southern Ocean, we propose the Ordered Factor LASSO or OFAL penalty for order selection and achieving sparsity in GLLVMs. The OFAL penalty is the first penalty developed specifically for order selection in latent variable models, and achieves this by using a hierarchically structured group LASSO type penalty to shrink entire columns of the loading matrix to zero, while ensuring that non‐zero loadings are concentrated on the lower‐order factors. Simultaneously, individual element sparsity is achieved through the use of an adaptive LASSO. In conjunction with using an information criterion which promotes aggressive shrinkage, simulation shows that the OFAL penalty performs strongly compared with standard methods and penalties for order selection, achieving sparsity, and prediction in GLLVMs. Applying the OFAL penalty to the Southern Ocean marine species dataset suggests the available environmental predictors explain roughly half of the total covariation between species, thus leading to a smaller number of latent variables and increased sparsity in the loading matrix compared to a model without any covariates. Article in Journal/Newspaper Southern Ocean Australian National University: ANU Digital Collections Southern Ocean Biometrics 74 4 1311 1319
institution Open Polar
collection Australian National University: ANU Digital Collections
op_collection_id ftanucanberra
language English
description Generalized linear latent variable models (GLLVMs) offer a general framework for flexibly analyzing data involving multiple responses. When fitting such models, two of the major challenges are selecting the order, that is, the number of factors, and an appropriate structure for the loading matrix, typically a sparse structure. Motivated by the application of GLLVMs to study marine species assemblages in the Southern Ocean, we propose the Ordered Factor LASSO or OFAL penalty for order selection and achieving sparsity in GLLVMs. The OFAL penalty is the first penalty developed specifically for order selection in latent variable models, and achieves this by using a hierarchically structured group LASSO type penalty to shrink entire columns of the loading matrix to zero, while ensuring that non‐zero loadings are concentrated on the lower‐order factors. Simultaneously, individual element sparsity is achieved through the use of an adaptive LASSO. In conjunction with using an information criterion which promotes aggressive shrinkage, simulation shows that the OFAL penalty performs strongly compared with standard methods and penalties for order selection, achieving sparsity, and prediction in GLLVMs. Applying the OFAL penalty to the Southern Ocean marine species dataset suggests the available environmental predictors explain roughly half of the total covariation between species, thus leading to a smaller number of latent variables and increased sparsity in the loading matrix compared to a model without any covariates.
format Article in Journal/Newspaper
author Hui, Francis
Tanaka, Emi
Warton, David I.
spellingShingle Hui, Francis
Tanaka, Emi
Warton, David I.
Order selection and sparsity in latent variable models via the ordered factor LASSO
author_facet Hui, Francis
Tanaka, Emi
Warton, David I.
author_sort Hui, Francis
title Order selection and sparsity in latent variable models via the ordered factor LASSO
title_short Order selection and sparsity in latent variable models via the ordered factor LASSO
title_full Order selection and sparsity in latent variable models via the ordered factor LASSO
title_fullStr Order selection and sparsity in latent variable models via the ordered factor LASSO
title_full_unstemmed Order selection and sparsity in latent variable models via the ordered factor LASSO
title_sort order selection and sparsity in latent variable models via the ordered factor lasso
publisher International Biometrics Society
url http://hdl.handle.net/1885/220047
https://doi.org/10.1111/biom.12888
https://openresearch-repository.anu.edu.au/bitstream/1885/220047/3/01_Hui_Order_selection_and_sparsity_2018.pdf.jpg
geographic Southern Ocean
geographic_facet Southern Ocean
genre Southern Ocean
genre_facet Southern Ocean
op_source Biometrics
op_relation 0006-341X
http://hdl.handle.net/1885/220047
doi:10.1111/biom.12888
https://openresearch-repository.anu.edu.au/bitstream/1885/220047/3/01_Hui_Order_selection_and_sparsity_2018.pdf.jpg
op_rights © 2018, The International Biometric Society
op_doi https://doi.org/10.1111/biom.12888
container_title Biometrics
container_volume 74
container_issue 4
container_start_page 1311
op_container_end_page 1319
_version_ 1788065695798394880