Linear mixed models are a versatile statistical tool to study data by accounting for fixed effects and random effects from multiple sources of variability. In many situations, a large number of candidate fixed effects is available and it is of interest to select a parsimonious subset of those being effectively relevant for predicting the response variable. Variational approximations facilitate fast approximate Bayesian inference for the parameters of a variety of statistical models, including linear mixed models. However, for models having a high number of fixed or random effects, simple application of standard variational inference principles does not lead to fast approximate inference algorithms, due to the size of model design matrices a...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational approximations are approximate inference techniques for complex statisticalmodels provid...
Variational approximation methods have become a mainstay of contemporary Machine Learn-ing methodolo...
Linear mixed models are a versatile statistical tool to study data by accounting for fixed effects a...
We derive streamlined mean field variational Bayes algorithms for fitting linear mixed models with cro...
<div><p>Mixtures of linear mixed models (MLMMs) are useful for clustering grouped data and can be es...
<div><p>The article develops a hybrid Variational Bayes algorithm that combines the mean-field and s...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
In high-dimensional regression models, the Bayesian lasso with the Gaussian spike and slab priors is...
Variational inference is an alternative estimation technique for Bayesian models. Recent work shows ...
We study a mean-field spike and slab variational Bayes (VB) approximation to Bayesian model selectio...
We study a mean-field spike and slab variational Bayes (VB) approximation to Bayesian model selectio...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
In this work, we propose a novel approximated collapsed variational Bayes approach to model selectio...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational approximations are approximate inference techniques for complex statisticalmodels provid...
Variational approximation methods have become a mainstay of contemporary Machine Learn-ing methodolo...
Linear mixed models are a versatile statistical tool to study data by accounting for fixed effects a...
We derive streamlined mean field variational Bayes algorithms for fitting linear mixed models with cro...
<div><p>Mixtures of linear mixed models (MLMMs) are useful for clustering grouped data and can be es...
<div><p>The article develops a hybrid Variational Bayes algorithm that combines the mean-field and s...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
In high-dimensional regression models, the Bayesian lasso with the Gaussian spike and slab priors is...
Variational inference is an alternative estimation technique for Bayesian models. Recent work shows ...
We study a mean-field spike and slab variational Bayes (VB) approximation to Bayesian model selectio...
We study a mean-field spike and slab variational Bayes (VB) approximation to Bayesian model selectio...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
In this work, we propose a novel approximated collapsed variational Bayes approach to model selectio...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational approximations are approximate inference techniques for complex statisticalmodels provid...
Variational approximation methods have become a mainstay of contemporary Machine Learn-ing methodolo...