"

Autori
Bazzoli, Caroline
Lambert-Lacroix, Sophie
Martinez, Marie-Jose

Titolo
Partial least square based approaches for high-dimensional linear mixed models
Periodico
Statistical methods & applications : Journal of the Italian Statistical Society
Anno: 2023 - Volume: 32 - Fascicolo: 3 - Pagina iniziale: 769 - Pagina finale: 786

To deal with repeated data or longitudinal data, linear mixed effects models are commonly used. A classical parameter estimation method is the Expectation–Maximization (EM) algorithm. In this paper, we propose three new Partial Least Square (PLS) based approaches using the EM-algorithm to reduce the high-dimensional data to a lower one for fixed effects in linear mixed models. Unlike the Principal Component Regression approach, the PLS method allows to take into account the link between the outcome and the independent variables. We compare these approaches from a simulation study and a yeast cell-cycle gene expression data set. We demonstrate the performance of two of them and we recommend their use to conduct future analyses for high dimensional data in linear mixed effect models context.



SICI: 1618-2510(2023)32:3<769:PLSBAF>2.0.ZU;2-1

Esportazione dati in Refworks (solo per utenti abilitati)

Record salvabile in Zotero

Biblioteche ACNP che possiedono il periodico