Variational Inference for Bayesian MIDAS Regression
Luigi Simeone

TL;DR
This paper introduces a fast, accurate variational inference algorithm for Bayesian MIDAS regression, enabling efficient uncertainty quantification and comparable results to traditional methods in volatility forecasting.
Contribution
It develops a novel CAVI algorithm tailored for Bayesian MIDAS regression with closed-form updates, significantly speeding up inference while maintaining accuracy.
Findings
CAVI achieves 107x to 1772x speedup over Gibbs sampling.
Posterior means from CAVI closely match Gibbs sampler results.
Weight parameters are well-calibrated with over 92% coverage.
Abstract
We develop a Coordinate Ascent Variational Inference (CAVI) algorithm for Bayesian Mixed Data Sampling (MIDAS) regression with linear weight parameterizations. The model separates impact coeffcients from weighting function parameters through a normalization constraint, creating a bilinear structure that renders generic Hamiltonian Monte Carlo samplers unreliable while preserving conditional conjugacy exploitable by CAVI. Each variational update admits a closed-form solution: Gaussian for regression coefficients and weight parameters, Inverse-Gamma for the error variance. The algorithm propagates uncertainty across blocks through second moments, distinguishing it from naive plug-in approximations. In a Monte Carlo study spanning 21 data-generating configurations with up to 50 predictors, CAVI produces posterior means nearly identical to a block Gibbs sampler benchmark while achieving…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Bayesian Methods and Mixture Models · Markov Chains and Monte Carlo Methods
