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Adaptive Bayesian Procedures Using Random Series Priors

机译:使用随机序列先验的自适应贝叶斯程序

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摘要

We consider a general class of prior distributions for nonparametric Bayesian estimation which uses finite random series with a random number of terms. A prior is constructed through distributions on the number of basis functions and the associated coefficients. We derive a general result on adaptive posterior contraction rates for all smoothness levels of the target function in the true model by constructing an appropriate 'sieve' and applying the general theory of posterior contraction rates. We apply this general result on several statistical problems such as density estimation, various nonparametric regressions, classification, spectral density estimation and functional regression. The prior can be viewed as an alternative to the commonly used Gaussian process prior, but properties of the posterior distribution can be analysed by relatively simpler techniques. An interesting approximation property of B-spline basis expansion established in this paper allows a canonical choice of prior on coefficients in a random series and allows a simple computational approach without using Markov chain Monte Carlo methods. A simulation study is conducted to show that the accuracy of the Bayesian estimators based on the random series prior and the Gaussian process prior are comparable. We apply the method on Tecator data using functional regression models.
机译:我们考虑非参数贝叶斯估计的一类普通先验分布,它使用带有随机项数的有限随机序列。通过对基函数和相关系数的数量进行分布来构造先验。通过构建适当的“筛子”并应用后收缩率的一般理论,我们得出了真实模型中目标函数所有平滑度的自适应后收缩率的一般结果。我们将此一般结果应用于几个统计问题,例如密度估计,各种非参数回归,分类,光谱密度估计和功能回归。先验可以看作是通常使用的高斯过程先验的替代,但是后验分布的属性可以通过相对简单的技术来分析。本文建立的B样条基展开的一个有趣的近似性质允许对随机序列中的先验系数进行规范选择,并允许使用不使用马尔可夫链蒙特卡洛方法的简单计算方法。进行的仿真研究表明,基于随机序列先验和高斯过程先验的贝叶斯估计量的准确性是可比的。我们使用功能回归模型对Tecator数据应用该方法。

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