Variational Bayesian Monte Carlo (VBMC): Bayesian inference
VBMC is an approximate Bayesian inference method designed to fit and evaluate computational models with a limited budget of potentially noisy likelihood evaluations (e.g., for computationally expensive models) [1,2]. Specifically, VBMC simultaneously computes:
- an approximate Bayesian posterior distribution of the model parameters;
- an approximation — technically, an approximate lower bound — of the log model evidence (also known as log marginal likelihood or log Bayes factor), a metric used for Bayesian model selection.
Extensive benchmarks on both artificial test problems and a large number of real model-fitting problems from computational and cognitive neuroscience show that VBMC generally — and often vastly — outperforms alternative methods for sample-efficient Bayesian inference.
VBMC runs with virtually no tuning and it is very easy to set up for your problem.
*** For extensive information, tutorials and documentation, please visit the GitHub page of the project: https://github.com/lacerbi/vbmc ***
If you are interested in point estimates of the parameters, you might want to check out Bayesian Adaptive Direct Search (BADS), an optimization method for model-fitting which can be used in synergy with VBMC: https://github.com/lacerbi/bads
Citation pour cette source
[3] Acerbi, L. (2019). An Exploration of Acquisition and Mean Functions in Variational Bayesian Monte Carlo. In Proc. Machine Learning Research 96: 1-10. 1st Symposium on Advances in Approximate Bayesian Inference, Montréal, Canada.
Compatibilité avec les versions de MATLAB
Plateformes compatibles
Windows macOS LinuxCatégories
Tags
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!Découvrir Live Editor
Créez des scripts avec du code, des résultats et du texte formaté dans un même document exécutable.
acq
ent
gplite
gplite/private
misc
private
shared
utils
Version | Publié le | Notes de version | |
---|---|---|---|
1.0.6 | See release notes for this release on GitHub: https://github.com/lacerbi/vbmc/releases/tag/v1.0.6 |