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76

Nonparametric Bayesian posterior contraction rates for discretely observed scalar diffusions

19 October 2015
Richard Nickl
Jakob Sohl
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Abstract

We consider nonparametric Bayesian inference in a reflected diffusion model dXt=b(Xt)dt+σ(Xt)dWt,dX_t = b (X_t)dt + \sigma(X_t) dW_t,dXt​=b(Xt​)dt+σ(Xt​)dWt​, with discretely sampled observations X0,XΔ,…,XnΔX_0, X_\Delta, \dots, X_{n\Delta}X0​,XΔ​,…,XnΔ​. We analyse the nonlinear inverse problem corresponding to the `low frequency sampling' regime where Δ>0\Delta>0Δ>0 is fixed and n→∞n \to \inftyn→∞. A general theorem is proved that gives conditions for prior distributions Π\PiΠ on the diffusion coefficient σ\sigmaσ and the drift function bbb that ensure minimax optimal contraction rates of the posterior distribution over H\"older-Sobolev smoothness classes. These conditions are verified for natural examples of nonparametric random wavelet series priors. For the proofs we derive new concentration inequalities for empirical processes arising from discretely observed diffusions that are of independent interest.

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