Nonparametric Bayesian posterior contraction rates for scalar diffusions with high-frequency data

Abstract
We consider inference in the scalar diffusion model with discrete data , and periodic coefficients. For given, we prove a general theorem detailing conditions under which Bayesian posteriors will contract in -distance around the true drift function at the frequentist minimax rate (up to logarithmic factors) over Besov smoothness classes. We exhibit natural nonparametric priors which satisfy our conditions. Our results show that the Bayesian method adapts both to an unknown sampling regime and to unknown smoothness.
View on arXivComments on this paper