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Consistent inference for diffusions from low frequency measurements

Abstract

Let (Xt)(X_t) be a reflected diffusion process in a bounded convex domain in Rd\mathbb R^d, solving the stochastic differential equation dX_t = \nabla f(X_t) dt + \sqrt{2f (X_t)} dW_t, ~t \ge 0, with WtW_t a dd-dimensional Brownian motion. The data X0,XD,,XNDX_0, X_D, \dots, X_{ND} consist of discrete measurements and the time interval DD between consecutive observations is fixed so that one cannot `zoom' into the observed path of the process. The goal is to infer the diffusivity ff and the associated transition operator Pt,fP_{t,f}. We prove injectivity theorems and stability inequalities for the maps fPt,fPD,f,t<Df \mapsto P_{t,f} \mapsto P_{D,f}, t<D. Using these estimates we establish the statistical consistency of a class of Bayesian algorithms based on Gaussian process priors for the infinite-dimensional parameter ff, and show optimality of some of the convergence rates obtained. We discuss an underlying relationship between the degree of ill-posedness of this inverse problem and the `hot spots' conjecture from spectral geometry.

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