Scientific Committee
Nicolas Chopin (ENSAE)
Mike Gartrell (Criteo)
Alberto Lumbreras (Criteo)
David Rohde (Criteo)
Otmane Sakhi (Criteo)
Maxime Vono (Criteo)
Organising Committee
Tatiana Podgorbunschih (Criteo)
July 21st, 2021 |
Yixin Wang |
'Representation Learning: A Causal Perspective | |
June 9th, 2021 |
Patrick Gallineri |
Dynamical state-space models for videos: stochastic prediction and spatio-temporal disentanglement |
>> Replay |
May 19th, 2021 |
Simon Barthelmé |
Kernel matrices in the flat limit |
>> Replay |
April 21st, 2021 |
Frank van der Meulen |
Automatic Backward Filtering Forward Guiding for Markov processes and graphical models |
>> Replay |
Apr 7th, 2021 |
Rémi Bardenet |
Monte Carlo integration with repulsive point processes |
>> Replay |
Mar 24th, 2021 |
Anthony Lee |
A general perspective on the Metropolis–Hastings kernel – Part 2 |
>> Replay |
Mar 17th, 2021 |
Christophe Andrieu |
A general perspective on the Metropolis–Hastings kernel - Part 1 |
>> Replay |
Feb 24th, 2021 |
Florence Forbes |
Approximate Bayesian computation with surrogate posteriors |
>> Replay |
Feb 10th, 2021 |
Art Owen |
Backfitting for large scale crossed random effects regressions |
>> Replay |
January 27th, 2021 |
Omiros Papaspiliopoulos |
Scalable computation for Bayesian hierarchical models |
>> Replay |
December 16th, 2020 |
Sara Wade & Karla Monterrubio-Gómez |
On MCMC for variationally sparse Gaussian process: A pseudo-marginal approach |
>> Replay |
December 2nd, 2020 |
Nicolas Chopin |
The Surprisingly Overlooked Efficiency of Sequential Monte Carlo (and how to make it even more efficient) |
>> Replay |
November 18th |
Sarah Filippi |
Interpreting Bayesian Deep Neural Networks Through Variable Importance | |
November 13th, 2020 |
Dawen Liang |
Variational Autoencoders for Recommender Systems: A Critical Retrospective and a (Hopefully) Optimistic Prospective |
>> Replay |
September 4th, 2020 |
Pierre Latouche |
Unsupervised Bayesian variable selection |
>> Replay |
October 21st, 2020 |
Chris Oates and Takuo Matsubara |
A Covariance Function Approach to Prior Specification for Bayesian Neural Networks |
>> Replay |
September 23rd, 2020 |
Stephan Mandt |
Compressing Variational Bayes |
>> Replay |
September 16th, 2020 |
François Caron |
Statistical models with double power-law behavior | |
September 9th, 2020 |
Maxime Vono |
Efficient and parallel MCMC sampling using ADMM-type splitting |
>> Talk page >> Replay |
August 26th, 2020 |
Andrew Gelman |
Bayesian Workflow |
>> Replay |
July 29th, 2020 |
Cheng Zhang |
Efficient element-wise information acquisition with Bayesian experimental design |
>> Talk page >> Replay |
July 8th, 2020 |
Victor Elvira |
Importance sampling as a mindset |
>> Talk page >> Replay |
July 1st, 2020 |
John Ormerod |
Cake priors for Bayesian hypothesis testing and extensions via variational Bayes |
>> Talk page >> Replay |
June 24th, 2020 |
Aki Vehtari |
Use of reference models in variable selection |
>> Talk page >> Replay |
June 17th, 2020 |
Jake Hofman |
How visualizing inferential uncertainty can mislead readers about treatment effects in scientific results |
>> Talk page >> Replay |
May 13th, 2020 |
Christian Robert |
Component-wise approximate Bayesian computation via Gibbs-like steps |
>> Talk page >> Replay |