Graph explorer

Enhanced Laplace Approximation

The Laplace approximation (LA) has been proposed as a method for approximating the marginal likelihood of statistical models with latent variables. However, the approximate maximum likelihood estimators (MLEs) based on the LA are often biased for binary or spatial data, and the corresponding Hessian matrix underestimates the standard errors of these approximate MLEs. A higher-order approximation has been proposed; however, it cannot be applied to complicated models such as correlated random effects models and does not provide consistent variance estimators. In this paper, we propose an enhanced LA (ELA) that provides the true MLE and its consistent variance estimator. We study its relationship to the variational Bayes method. We also introduce a new restricted maximum likelihood estimator (REMLE) for estimating dispersion parameters. The results of numerical studies show that the ELA provides a satisfactory MLE and REMLE, as well as their variance estimators for fixed parameters. The MLE and REMLE can be viewed as posterior mode and marginal posterior mode under flat priors, respectively. Some comparisons are also made with Bayesian procedures under different priors.

4 nodes3 linksoverview previewEnhanced Laplace Approximation
4 nodes3 links
Enhanced Laplace Approximation4 visible / 4 total nodes / 4 links
Co-authorshipAuthorshipAuthorshipTopic signalWEnhanced Laplace Approximationpreprint / 2022AJeongseop HanResearcherAYoungjo LeeResearcherTMethodology5119 works
PaperSignal 103 links

Enhanced Laplace Approximation

preprint / 2022

Open