Reverse Markov Learning for high-dimensional generative models with distributional shifts
Modelling distributional shifts in high-dimensions is challenging for at least two reasons.
There is a computational challenge: most generative models like diffusion-based models quickly become very expensive in a high-dimensional context.
There is also a statistical challenge on how to model the distributional shifts in a robust way, especially if (in a causal context) interventions will extend to previously unseen support.
I want to show in this talk how using Reverse Markov Learning.(building on earlier work of Engression) can address these two challenges and provide a lightweight generative model in this setting. I will show as a case study the emulation of global circulation models under various forcing regimes.
Joint work with Xinwei Shen, Malte Meinshausen, and Tong Zhang.
Event Date
Location
310 Sutardja Dai Hall (Banatao Auditorium)
Event ID
311887