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Posterior contraction in Gaussian process regression using Wasserstein approximations
Published 9 Feb 2015 in math.ST and stat.TH | (1502.02336v2)
Abstract: We study posterior rates of contraction in Gaussian process regression with unbounded covariate domain. Our argument relies on developing a Gaussian approximation to the posterior of the leading coefficients of a Karhunen--Lo\'{e}ve expansion of the Gaussian process. The salient feature of our result is deriving such an approximation in the $L2$ Wasserstein distance and relating the speed of the approximation to the posterior contraction rate using a coupling argument. Specific illustrations are provided for the Gaussian or squared-exponential covariance kernel.
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