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Published February 7, 2013 | Submitted
Journal Article Open

Posterior consistency via precision operators for Bayesian nonparametric drift estimation in SDEs

Abstract

We study a Bayesian approach to nonparametric estimation of the periodic drift function of a one-dimensional diffusion from continuous-time data. Rewriting the likelihood in terms of local time of the process, and specifying a Gaussian prior with precision operator of differential form, we show that the posterior is also Gaussian with the precision operator also of differential form. The resulting expressions are explicit and lead to algorithms which are readily implementable. Using new functional limit theorems for the local time of diffusions on the circle, we bound the rate at which the posterior contracts around the true drift function.

Additional Information

© 2012 Elsevier. Received 5 February 2012; received in revised form 31 July 2012; accepted 23 August 2012; Available online 7 September 2012. The research of AMS is funded by the EPSRC (UK) and by the ERC. The research of JHvZ is supported by the Netherlands Organization for Scientific Research NWO. The authors are grateful to Sergios Agapiou for helpful comments.

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