F. Javier Rubio
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fjrubio.bsky.social
F. Javier Rubio
@fjrubio.bsky.social
Lecturer at the Department of Statistical Science of UCL. All opinions my own. 🇲🇽🇬🇧

https://sites.google.com/site/fjavierrubio67/

#rstats #JuliaLang #Bayesian #Statistics #Biostatistics
Reposted by F. Javier Rubio
The subsequent webinar will be on:

📅 November 5, 2025 (4:00 PM UTC | 11:00 AM EST | 5:00 PM CET)
“Model Uncertainty and Missing Data: An Objective Bayesian Perspective”
by G. García-Donato, M. Eugenia Castellanos, S. Cabras, A. Quirós, and A. Forte
doi.org/10.1214/25-B...
Model Uncertainty and Missing Data: An Objective Bayesian Perspective
The interplay between missing data and model uncertainty—two classic statistical problems—leads to primary questions that we formally address from an objective Bayesian perspective. For the general regression problem, we discuss the probabilistic justification of Rubin’s rules applied to the usual components of Bayesian variable selection, arguing that prior predictive marginals should be central to the pursued methodology. In the regression settings, we explore the conditions of prior distributions that make the missing data mechanism ignorable, provided that it is missing at random or completely at random. Moreover, when comparing multiple linear models, we provide a complete methodology for dealing with special cases, such as variable selection or uncertainty regarding model errors. In numerous simulation experiments, we demonstrate that our method outperforms or equals others, in consistently producing results close to those obtained using the full dataset. In general, the difference increases with the percentage of missing data and the correlation between the variables used for imputation. Finally, we summarize possible directions for future research.
doi.org
September 8, 2025 at 8:00 PM
Most cancer patients face comorbidities that complicate survival. We use Bayesian machine learning (BART) in a relative survival framework to estimate excess hazard, uncover vulnerable subgroups, and identify drivers of inequalities in colon cancer survival.
August 21, 2025 at 6:20 AM
Not a proper ML guy, but I have used this trick a few times:

1. In the log-likelihood of relative survival models.

github.com/FJRubio67/Ha...

2. Some “intractable likelihood” models:

rpubs.com/FJRubio/AMLE...
GitHub - FJRubio67/HazReg: Parametric hazard-based regression models (R package)
Parametric hazard-based regression models (R package) - FJRubio67/HazReg
github.com
May 24, 2025 at 5:07 PM