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-Modeling Program for Deconvolution and Empirical Bayes Estimation

机译:用于折卷积和经验贝叶斯估计的模型计划

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Empirical Bayes inference assumes an unknown prior density g(θ) has yielded (unobservables) Θ1 , Θ2 , . . . , ΘN , and each Θi produces an independent observation Xi from pi (Xi |Θi ). The marginal density fi (Xi ) is a convolution of the prior g and pi . The Bayes deconvolution problem is one of recovering g from the data. Although estimation of g - so called g-modeling - is difficult, the results are more encouraging if the prior g is restricted to lie within a parametric family of distributions. We present a deconvolution approach where g is restricted to be in a parametric exponential family, along with an R package deconvolveR designed for the purpose.
机译:经验贝叶斯推理假设未知的先前密度G(θ)产生(不可接发)θ1,θ2,。 。 。 ,θn,每个θi从pi(xi |θi)产生独立的观察xi。边缘密度fi(xi)是先前g和pi的卷积。贝叶斯解卷积问题是从数据中恢复G.尽管G - 所谓的G型建模的估计虽然困难,但是如果先前的G被限制在分布系列中,则结果更令人鼓舞。我们提出了一种折衷方式方法,其中G被限制在参数指数家庭中,以及为目的设计的R包Deconvolver。

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