Scalable and accurate variational Bayes for high-dimensional binary regression models
成果类型:
Article
署名作者:
Fasano, Augusto; Durante, Daniele; Zanella, Giacomo
署名单位:
Bocconi University
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/asac026
发表日期:
2022
页码:
901919
关键词:
probit regression
inference
MULTIVARIATE
CLASSIFICATION
摘要:
Modern methods for Bayesian regression beyond the Gaussian response setting are often computationally impractical or inaccurate in high dimensions. In fact, as discussed in recent literature, bypassing such a trade-off is still an open problem even in routine binary regression models, and there is limited theory on the quality of variational approximations in high-dimensional settings. To address this gap, we study the approximation accuracy of routinely used mean-field variational Bayes solutions in high-dimensional probit regression with Gaussian priors, obtaining novel and practically relevant results on the pathological behaviour of such strategies in uncertainty quantification, point estimation and prediction. Motivated by these results, we further develop a new partially factorized variational approximation for the posterior distribution of the probit coefficients that leverages a representation with global and local variables but, unlike for classical mean-field assumptions, it avoids a fully factorized approximation, and instead assumes a factorization only for the local variables. We prove that the resulting approximation belongs to a tractable class of unified skew-normal densities that crucially incorporates skewness and, unlike for state-of-the-art mean-field solutions, converges to the exact posterior density as p -> infinity. To solve the variational optimization problem, we derive a tractable coordinate ascent variational inference algorithm that easily scales top in the tens of thousands, and provably requires a number of iterations converging to 1 as p -> infinity. Such findings are also illustrated in extensive empirical studies where our novel solution is shown to improve the approximation accuracy of mean-field variational Bayes for any n and p, with the magnitude of these gains being remarkable in those high-dimensional p > n settings where state-of-the-art methods are computationally impractical.