TY - JOUR
T1 - Bayesian leave-one-out cross-validation approximations for Gaussian latent variable models
AU - Vehtari, Aki
AU - Mononen, Tommi
AU - Tolvanen, Ville
AU - Sivula, Tuomas
AU - Winther, Ole
PY - 2016/6/1
Y1 - 2016/6/1
N2 - The future predictive performance of a Bayesian model can be estimated using Bayesian cross-validation. In this article, we consider Gaussian latent variable models where the integration over the latent values is approximated using the Laplace method or expectation propagation (EP). We study the properties of several Bayesian leave-one-out (LOO) cross-validation approximations that in most cases can be computed with a small additional cost after forming the posterior approximation given the full data. Our main objective is to assess the accuracy of the approximative LOO cross-validation estimators. That is, for each method (Laplace and EP) we compare the approximate fast computation with the exact brute force LOO computation. Secondarily, we evaluate the accuracy of the Laplace and EP approximations themselves against a ground truth established through extensive Markov chain Monte Carlo simulation. Our empirical results show that the approach based upon a Gaussian approximation to the LOO marginal distribution (the so-called cavity distribution) gives the most accurate and reliable results among the fast methods.
AB - The future predictive performance of a Bayesian model can be estimated using Bayesian cross-validation. In this article, we consider Gaussian latent variable models where the integration over the latent values is approximated using the Laplace method or expectation propagation (EP). We study the properties of several Bayesian leave-one-out (LOO) cross-validation approximations that in most cases can be computed with a small additional cost after forming the posterior approximation given the full data. Our main objective is to assess the accuracy of the approximative LOO cross-validation estimators. That is, for each method (Laplace and EP) we compare the approximate fast computation with the exact brute force LOO computation. Secondarily, we evaluate the accuracy of the Laplace and EP approximations themselves against a ground truth established through extensive Markov chain Monte Carlo simulation. Our empirical results show that the approach based upon a Gaussian approximation to the LOO marginal distribution (the so-called cavity distribution) gives the most accurate and reliable results among the fast methods.
KW - Expectation propagation
KW - Gaussian latent variable model
KW - Laplace approximation
KW - Leave-one-out cross-validation
KW - Predictive performance
UR - http://www.scopus.com/inward/record.url?scp=84988932233&partnerID=8YFLogxK
M3 - Article
AN - SCOPUS:84988932233
SN - 1532-4435
VL - 17
SP - 1
EP - 38
JO - Journal of Machine Learning Research
JF - Journal of Machine Learning Research
ER -