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Adaptive Bayesian inference in the Gaussian sequence model using exponential-variance priors

机译:高斯序列模型中使用指数方差先验的自适应贝叶斯推断

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摘要

We revisit the problem of estimating the mean of an infinite dimensional normal distribution in a Bayesian paradigm. Of particular interest is obtaining adaptive estimation procedures so that the posterior distribution attains optimal rate of convergence without the knowledge of the true smoothness of the underlying parameter of interest. Belitser & Ghosal (2003) studied a class of power-variance priors and obtained adaptive posterior convergence rates assuming that the underlying smoothness lies inside a countable set on which the prior is specified. In this article, we propose a different class of exponential-variance priors, which leads to optimal rate of posterior convergence (up to a logarithmic factor) adaptively over all the smoothness levels in the positive real line. Our proposal draws a close parallel with signal estimation in a white noise model using rescaled Gaussian process prior with squared exponential covariance kernel. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们重新审视贝叶斯范式中无穷维正态分布的均值的估计问题。特别令人感兴趣的是获得自适应估计程序,以使后验分布获得最佳收敛速度,而无需了解感兴趣的基础参数的真实平滑度。 Belitser&Ghosal(2003)研究了一类幂方差先验,并获得了自适应后验收敛率,前提是基础平滑度位于指定先验的可数集内。在本文中,我们提出了另一类指数方差先验,它可以在正实线的所有平滑度水平上自适应地导致最优后验收敛速率(最高达对数因子)。我们的建议在平方指数协方差核之前使用重新缩放的高斯过程,在白噪声模型中与信号估计非常接近。 (C)2015 Elsevier B.V.保留所有权利。

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