AI Centre Seminar Series – Talk on Monday 17th March 2025
17 March 2025, 1:00 pm–2:00 pm

The AI Centre is excited to be hosting a talk by Nicolas Chopin, Professor of Statistics at ENSAE, Paris, entitled "Saddlepoint Monte Carlo and its application to exact ecological inference". This is part of the UCL AI Centre seminar series and run jointly with ELLIS. You can sign up to join in person or online, and the event will be recorded and uploaded to the AI Centre YouTube channel.
This event is free.
Event Information
Open to
- All
Availability
- Yes
Cost
- Free
Organiser
-
Anna Widdup – UCL Computer Science
Location
-
Function Space90 High HolbornLondonWC1V 6LJUnited Kingdom
Saddlepoint Monte Carlo and its application to exact ecological inference
Abstract:
Assuming X is a random vector and A a non-invertible matrix, one sometimes need to perform inference while only having access to samples of Y = AX. The corresponding likelihood is typically intractable. One may still be able to perform exact Bayesian inference using a pseudo-marginal sampler, but this requires an unbiased estimator of the intractable likelihood.
We propose saddlepoint Monte Carlo, a method for obtaining an unbiased estimate of the density of Y with very low variance, for any model belonging to an exponential family. Our method relies on importance sampling of the characteristic function, with insights brought by the standard saddlepoint approximation scheme with exponential tilting. We show that saddlepoint Monte Carlo makes it possible to perform exact inference on particularly challenging problems and datasets. We focus on the ecological inference problem, where one observes only aggregates at a fine level. We present in particular a study of the carryover of votes between the two rounds of various French elections, using the finest available data (number of votes for each candidate in about 60,000 polling stations over most of the French territory).
We show that existing, popular approximate methods for ecological inference can lead to substantial bias, which saddlepoint Monte Carlo is immune from. We also present original results for the 2024 legislative elections on political centre-to-left and left-to-centre conversion rates when the far-right is present in the second round. Finally, we discuss other exciting applications for saddlepoint Monte Carlo, such as dealing with aggregate data in privacy or inverse problems.
About the Speaker
Nicolas Chopin
Professor of Statistics at ENSAE, Paris
Nicolas Chopin (PhD, Université Pierre et Marie Curie, Paris, 2003) has been Professor of Statistics at ENSAE, Paris, since 2006. He was previously a lecturer at Bristol University (UK).
Nicolas Chopin is a fellow of the IMS, and a current or former associate editor for Annals of Statistics, Biometrika, Journal of the Royal Statistical Society, Statistics and Computing, and Statistical Methods & Applications. He has served as a member (2013-14) and secretary (2015-16) of the research section committee of the Royal Statistical Society. He received a Savage Award for his doctoral dissertation in 2002.
His research interests include computational statistics, Bayesian inference, and probabilistic machine learning.