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Confidence intervals for marginal parameters under imputation for item nonresponse

机译:项无响应推算下的边际参数置信区间

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Item nonresponse occurs frequently in sample surveys and other approaches to data collection. We consider three different methods of imputation to fill in the missing values in a random sample {Y-i, i = 1,..., n}: (i) mean imputation (M), (ii) random hot deck imputation (R), and (iii) adjusted random hot deck imputation (A). Asymptotic normality of the imputed estimators of the mean mu under M, R and A and the distribution function theta = F(y) and qth quantile theta(q), under R and A is established, assuming that the values are missing completely at random. This result is used to obtain normal approximation (NA)-based confidence intervals on mu, theta and theta(q). In the case of theta(q), Woodruff [1952. Confidence intervals for medians and other position measures, J. Amer. Statist. Assoc. 47, 635-646]-type confidence intervals are also obtained under R and A. Empirical log-likelihood ratios for the three cases are also obtained and shown to be asymptotically scaled chi(1)(2). This result is used to obtain asymptotically correct empirical likelihood (EL)-based confidence intervals on mu, theta and theta(q). Results of a simulation study on the finite sample performance of NA-based and EL-based confidence intervals are reported. Confidence intervals obtained here do not require identification flags on the imputed values in the data file; only the estimated response rate is needed with the imputed data file. This feature of our method is important because identification flags often may not be provided in practice with the data file due to confidentiality reasons.
机译:在样本调查和其他数据收集方法中,项目无响应经常发生。我们考虑三种不同的插补方法来填充随机样本{Yi,i = 1,...,n}中的缺失值:(i)平均插补(M),(ii)随机热插补插补(R) ,以及(iii)调整后的随机热插补插补(A)。假设在M,R和A下均值mu的估计量和分布函数theta = F(y)和q和第q个分位数theta(q)在R和A下的估计估计量的渐近正态性,假定值完全随机丢失。此结果用于获得关于mu,theta和theta(q)的基于正态近似(NA)的置信区间。对于theta(q),Woodruff [1952。中位数和其他位置测量值的置信区间,J。Amer。统计员。副会长在R和A下也可以获得47,635-646]型置信区间。还获得了这三种情况的经验对数似然比,并显示为渐近标度chi(1)(2)。此结果用于在mu,theta和theta(q)上获得基于渐近正确的基于经验似然(EL)的置信区间。报告了基于NA和基于EL的置信区间的有限样本性能的仿真研究结果。此处获得的置信区间不需要在数据文件中的插补值上带有标识标志;估算数据文件只需要估计的响应率。我们的方法的这一特性很重要,因为由于机密性的原因,实际上在数据文件中通常可能不会提供识别标志。

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