In surveys requiring cost efficiency, such as medical research, measuring the variable of interest (e.g., disease status) is expensive and/or time-consuming; However, we often have access to easily attainable characteristics about sampling units. These characteristics are not typically employed in the data collection process. Judgment post-stratification (JPS) sampling enables us to supplement the random samples from the population of interest with these characteristics as ranking information. In this paper, we develop methods based on JPS samples for the estimation of categorical ordinal populations. We develop various estimators from JPS data even for a situation where JPS suffers from empty strata. We also propose JPS estimators using multiple ranking resources. Through extensive numerical studies, we evaluate the performance of the methods in the estimation of the population. Finally, the developed estimation methods are applied to bone mineral data to estimate the bone disorder status of women aged 50 and older.
翻译:在需要成本效率的调查中,例如医学研究,衡量利益变量(如疾病状况)是昂贵和/或耗费时间的; 然而,我们往往能够了解取样单位的容易实现的特点,这些特点通常在数据收集过程中不使用; 批准后抽样调查使我们能够以这些特征作为分级信息,补充有关人口中随机抽样; 在本文件中,我们根据JPS样本制定方法,以估计绝对或正常人口; 我们开发JPS数据的各种估计数据,即使JPS数据中存在空层的情况。 我们还利用多个排名资源推荐JPS估计数据; 我们通过大量的数字研究,评估人口估计方法的绩效; 最后,我们将开发的估算方法应用于骨质矿物数据,以估计50岁及50岁以上妇女的骨骼紊乱状况。