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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Posterior consistency of Gaussian process prior for nonparametric binary regression
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Posterior consistency of Gaussian process prior for nonparametric binary regression

机译:非参数二元回归之前高斯过程的后验一致性

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摘要

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 L-1-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.
机译:考虑二进制观测值,其响应概率是一组协变量的未知平滑函数。假设响应概率函数的先验是通过链接函数映射到单位间隔的高斯过程引起的。在本文中,我们研究了后验分布的一致性。如果协方差内核具有高达期望阶数的导数,并且允许内核的带宽参数取任意小的值,则表明后验分布在L-1距离上是一致的。作为证明的辅助结果,我们表明,在一定条件下,高斯过程将正概率分配给连续函数的均匀邻域。对于高斯过程的小球概率,该结果可能在文献中具有独立的意义。

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