Brown Bag Seminar: Theoretical Guarantees for Diffusion-Based Generative Models under Minimal Assumptions

Relatore
Marta Gentiloni Silveri - École Polytechnique Paris

Data
28-mag-2026 - Ora: 12:00 Aula Vaona

Diffusion-based generative models have recently achieved state-of-the-art empirical performance across a wide range of applications. Despite this success, their theoretical understanding remains limited, particularly under weak assumptions on the target distribution. In this talk, I will present recent quantitative convergence guarantees for several classes of diffusion-based generative methods, including Score-based Generative Models (SGMs), Diffusion Flow Matching models (DFMs), and Iterative Markovian Fitting (IMF). The focus will be on quantifying the discrepancy between the generated distribution and the target distribution through non-asymptotic bounds either in Kullback–Leibler divergence and/or Wasserstein distance. The results discussed were obtained during my PhD in collaboration with G. Conforti, A. Durmus, and A. Ocello.

Data pubblicazione
10-mag-2026

Referente
Marco Scaratti
Dipartimento
Scienze Economiche