Saved in:
Bibliographic Details
Main Authors: Ferrari, Luisa, Ventrucci, Massimo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.16057
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910801677254656
author Ferrari, Luisa
Ventrucci, Massimo
author_facet Ferrari, Luisa
Ventrucci, Massimo
contents Latent Gaussian Models (LGMs) are a subset of Bayesian Hierarchical models where Gaussian priors, conditional on variance parameters, are assigned to all effects in the model. LGMs are employed in many fields for their flexibility and computational efficiency. However, practitioners find prior elicitation on the variance parameters challenging because of a lack of intuitive interpretation for them. Recently, several papers have tackled this issue by rethinking the model in terms of variance partitioning (VP) and assigning priors to parameters reflecting the relative contribution of each effect to the total variance. So far, the class of priors based on VP has been mainly deployed for random effects and fixed effects separately. This work presents a novel standardization procedure that expands the applicability of VP priors to a broader class of LGMs, including both fixed and random effects. We describe the steps required for standardization through various examples, with a particular focus on the popular class of intrinsic Gaussian Markov random fields (IGMRFs). The practical advantages of standardization are demonstrated with simulated data and a real dataset on survival analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2501_16057
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Standardization Procedure to Incorporate Variance Partitioning Based Priors in Latent Gaussian Models
Ferrari, Luisa
Ventrucci, Massimo
Methodology
Latent Gaussian Models (LGMs) are a subset of Bayesian Hierarchical models where Gaussian priors, conditional on variance parameters, are assigned to all effects in the model. LGMs are employed in many fields for their flexibility and computational efficiency. However, practitioners find prior elicitation on the variance parameters challenging because of a lack of intuitive interpretation for them. Recently, several papers have tackled this issue by rethinking the model in terms of variance partitioning (VP) and assigning priors to parameters reflecting the relative contribution of each effect to the total variance. So far, the class of priors based on VP has been mainly deployed for random effects and fixed effects separately. This work presents a novel standardization procedure that expands the applicability of VP priors to a broader class of LGMs, including both fixed and random effects. We describe the steps required for standardization through various examples, with a particular focus on the popular class of intrinsic Gaussian Markov random fields (IGMRFs). The practical advantages of standardization are demonstrated with simulated data and a real dataset on survival analysis.
title A Standardization Procedure to Incorporate Variance Partitioning Based Priors in Latent Gaussian Models
topic Methodology
url https://arxiv.org/abs/2501.16057