2 papers across 2 sessions
We present NPE-PFN, a method that uses TabPFN for training-free and simulation-efficient Bayesian inference.
We propose a method for safely learning controlled stochastic dynamics from trajectories by incrementally expanding an initial safe control set using kernel-based confidence bounds, with theoretical guarantees on both safety and estimation accuracy.