• Séminaire / Formations,

Séminaire MODAL'X : Pierre Alquier (RIKEN AIP)

Publié le 5 février 2021 Mis à jour le 19 mai 2021

Parametric estimation via MMD minimization: robustness to outliers and dependence

Date(s)

le 27 mai 2021

Attention horaire exceptionnel : 13h-14h
Lieu(x)
En direct sur Teams
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Résumé : In this talk, I will study the properties of parametric estimators based on the Maximum Mean Discrepancy (MMD) defined by Briol et al. (2019). In a first time, I will show that these estimators are universal in the i.i.d setting: even in case of misspecification, they converge to the best approximation of the distribution of the data in the model, without ANY assumption on this model. This leads to very strong robustness properties. In a second time,I will show that these results remain valid when the data is not independent, but satisfy instead a weak-dependence condition. This condition is based on a new dependence coefficient, which is itself defined thanks to the MMD. I will show through examples that this new notion of dependence is actually quite general.
This talk is based on the following papers and softwares, with Badr-Eddine Chérief Abdellatif (Oxford University), Mathieu Gerber(University of Bristol), Jean-David Fermanian (ENSAE Paris) and Alexis Derumigny (University of Twente):
http://arxiv.org/abs/1912.05737
http://proceedings.mlr.press/v118/cherief-abdellatif20a.html
http://arxiv.org/abs/2006.00840
https://arxiv.org/abs/2010.00408
https://cran.r-project.org/web/packages/MMDCopula/

Mis à jour le 19 mai 2021