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Influential Observations in the Functional Measurement Error Model

机译:功能测量误差模型中的影响性观察

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摘要

In this work we propose Bayesian measures to quantify the influence of observations on the structural parameters of the simple measurement error model (MEM). Different influence measures, like those based on q -divergence between posterior distributions and Bayes risk, are studied to evaluate the influence. A strategy based on the perturbation function and MCMC samples is used to compute these measures. The samples from the posterior distributions are obtained by using the Metropolis-Hastings algorithm and assuming specific proper prior distributions. The results are illustrated with an application to a real example modeled with MEM in the literature.
机译:在这项工作中,我们提出贝叶斯测度,以量化观测值对简单测量误差模型(MEM)的结构参数的影响。研究了不同的影响度量,例如基于后验分布和贝叶斯风险之间的q-散度的影响度量,以评估影响。使用基于微扰函数和MCMC样本的策略来计算这些度量。通过使用Metropolis-Hastings算法并假设特定的适当先验分布,可以从后验分布中获取样本。通过在文献中使用MEM建模的真实示例的应用说明了结果。

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