Authors : ... (Author of the conference)
... (Publisher )
Abstract :
The Bayesian approach to inference is based on a coherent probabilistic framework that naturally leads to principled uncertainty quantification and prediction. Via posterior distributions, Bayesian nonparametric models make inference on parameters belonging to infinite-dimensional spaces, such as the space of probability distributions. The development of Bayesian nonparametrics has been triggered by the Dirichlet process, a nonparametric prior that allows one to learn the law of the observations through closed-form expressions. Still, its learning mechanism is often too simplistic and many generalizations have been proposed to increase its flexibility, a popular one being the class of normalized completely random measures. Here we investigate a simple yet fundamental matter: will a different prior actually guarantee a different learning outcome? To this end, we develop a new distance between completely random measures based on optimal transport, which provides an original framework for quantifying the similarity between posterior distributions (merging of opinions). Our findings provide neat and interpretable insights on the impact of popular Bayesian nonparametric priors, avoiding the usual restrictive assumptions on the data-generating process. This is joint work with Hugo Lavenant.
Keywords : Bayesian nonparametrics; completely random measures; Cox process; merging of opinions; optimal transport; Wasserstein distance
MSC Codes :
60G55
- Point processes
60G57
- Random measures
62C10
- Bayesian problems; characterization of Bayes procedures
49Q22
- Optimal transportation
Language : English
Available date : 27/11/2023
Conference Date : 30/10/2023
Subseries : Research School
arXiv category : Statistics Theory ; Probability
Mathematical Area(s) : Probability & Statistics
Format : MP4 (.mp4) - HD
Video Time : 00:47:54
Targeted Audience : Researchers ; Graduate Students ; Doctoral Students, Post-Doctoral Students
Download : https://videos.cirm-math.fr/2023-10-30_Catalano.mp4
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Event Title : Autumn school in Bayesian Statistics / École d'automne en statistique bayésienne Dates : 30/10/2023 - 03/11/2023
Event Year : 2023
Event URL : https://conferences.cirm-math.fr/2881.html
DOI : 10.24350/CIRM.V.20107203
Cite this video as:
(2023). Merging rate of opinions via optimal transport on random measures. CIRM. Audiovisual resource. doi:10.24350/CIRM.V.20107203
URI : http://dx.doi.org/10.24350/CIRM.V.20107203
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See Also
Bibliography
- CATALANO, Marta et LAVENANT, Hugo. Merging Rate of Opinions via Optimal Transport on Random Measures. arXiv preprint arXiv:2305.06116, 2023. - https://arxiv.org/abs/2305.06116