Abstract
Consider binary observations whose response probability is an unknown smooth function of a set of covariates. Suppose that a prior on the response probability function is induced by a Gaussian process mapped to the unit interval through a link function. In this paper we study consistency of the resulting posterior distribution. If the covariance kernel has derivatives up to a desired order and the bandwidth parameter of the kernel is allowed to take arbitrarily small values, we show that the posterior distribution is consistent in the L1-distance. As an auxiliary result to our proofs, we show that, under certain conditions, a Gaussian process assigns positive probabilities to the uniform neighborhoods of a continuous function. This result may be of independent interest in the literature for small ball probabilities of Gaussian processes. © Institute of Mathematical Statistics, 2006.
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Ghosal, S., & Roy, A. (2006). Posterior consistency of Gaussian process prior for nonparametric binary regression. Annals of Statistics, 34(5), 2413–2429. https://doi.org/10.1214/009053606000000795
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