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Estimation of Classification Probabilities in Small Domains Accounting for Nonresponse Relying on Imprecise Probability

机译:非响应依赖于不精确概率的小域分类概率的估算

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Nonresponse treatment is usually carried out through imposing strong assumptions regarding the response process in order to achieve point identifiability of the parameters of interest. Problematically, such assumptions are usually not readily testable and fallaciously imposing them may lead to severely biased estimates. In this paper we develop generalized Bayesian imprecise probability methods for estimation of proportions under potentially nonignorable nonresponse using data from small domains. Namely, we generalize the imprecise Beta model to this setting, treating missing values in a cautious way. Additionally, we extend the empirical Bayes model introduced by Stasny (1991, JASA) by considering a set of priors arising, for instance, from neighborhoods of maximum likelihood estimates of the hyper parameters. We reanalyze data from the American National Crime Survey to estimate the probability of victimization in domains formed by cross-classification of certain characteristics.
机译:非响应治疗通常通过对响应过程施加强烈的假设来实现,以实现感兴趣的参数的点可识别性。有问题地,这种假设通常不容易可测量,并且急于施加它们可能导致严重偏见的估计。在本文中,我们开发广泛性的贝叶斯不精确的概率方法,用于使用来自小域的数据的潜在不可能的非响应下的比例。即,我们将不精确的测试版模型概括为此设置,以谨慎的方式处理缺失值。此外,我们通过考虑由超参数的最大似然估计的最大可能性估计的邻域来扩展Stasny(1991,Jasa)引入的经验贝叶斯模型。我们从美国国家犯罪调查中重新分析数据,以估计通过某些特征的交叉分类形成的域中受害的概率。

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