Events
Daniele Bianchi (QMUL): Scalable Bayesian inference for dynamic variable selection in high-dimensional regressions
Centre for Probability, Statistics and Data ScienceDate: 13 November 2025 Time: 14:00 - 15:00
Location: Hybrid: Seminar Room MB-503, School of Mathematical Sciences, QMUL, or via the Teams link below
We develop a variational Bayes approach for dynamic variable selection in high-dimensional regression models with time-varying parameters and predictors that exhibit a predefined group structure. Through comprehensive simulation studies, we demonstrate that our method yields more accurate parameter estimates than existing Bayesian static and dynamic variable selection approaches while maintaining computational efficiency. We illustrate the performance of our approach within the context of a popular problem in economics: forecasting inflation based on a large set of macroeconomic predictors. Our approach demonstrates significant improvements in out-of-sample point and density forecasting accuracy. A retrospective analysis of the time-varying parameter estimates reveals economically interpretable patterns in inflation dynamics.
| Contact: | Nicolás Hernández |
| Email: | n.hernandez@qmul.ac.uk |
| Website: |
Updated by: Kostas Papafitsoros