从部分提名集进行统计推断:应用于估算成年女性骨质疏松症患病率

Pub Date : 2024-07-26 DOI:10.1016/j.jspi.2024.106214
Zeinab Akbari Ghamsari , Ehsan Zamanzade , Majid Asadi
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引用次数: 0

摘要

本文的重点是基于最大值或最小值提名抽样(NS)设计的新型变体进行统计推断。这些抽样设计有助于利用现有的辅助排序信息,从总体分布的尾部获得更具代表性的样本单位。然而,在实践中执行提名抽样的一个常见困难是,除非研究人员唯一确定每组中排名最高或最低的样本单位,否则无法获得提名样本。为了克服这个问题,我们提出了 NS 的一种变体,即部分提名抽样,允许研究人员在找不到排名最高或最低的样本单位时,宣布两个或两个以上的单位排名并列。基于这种抽样设计,利用最大似然法和基于矩的方法为累积分布函数建立了两个渐近无偏估计器,并证明了它们的渐近正态性。几项数值研究表明,在分析母分布的上尾或下尾时,所提出的估计器比简单随机抽样中的同类估计器具有更高的相对效率。随后,我们在第三次全国健康与营养调查(NHANES III)的真实数据集上实施了所开发的程序,以估计 50 岁及以上成年女性的骨质疏松症患病率。结果表明,在某些情况下,我们开发的技术只需要 SRS 所需的样本量的三分之一就能达到预期精度。与标准 SRS 方法相比,这大大减少了时间和成本。
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Statistical inference from partially nominated sets: An application to estimating the prevalence of osteoporosis among adult women

This paper focuses on drawing statistical inference based on a novel variant of maxima or minima nomination sampling (NS) designs. These sampling designs are useful for obtaining more representative sample units from the tails of the population distribution using the available auxiliary ranking information. However, one common difficulty in performing NS in practice is that the researcher cannot obtain a nominated sample unless he/she uniquely determines the sample unit with the highest or the lowest rank in each set. To overcome this problem, a variant of NS, which is called partial nomination sampling, is proposed, in which the researcher is allowed to declare that two or more units are tied in the ranks whenever he/she cannot find the sample unit with the highest or the lowest rank. Based on this sampling design, two asymptotically unbiased estimators are developed for the cumulative distribution function, which is obtained using maximum likelihood and moment-based approaches, and their asymptotic normalities are proved. Several numerical studies have shown that the proposed estimators have higher relative efficiencies than their counterparts in simple random sampling in analyzing either the upper or the lower tail of the parent distribution. The procedures that we developed are then implemented on a real dataset from the Third National Health and Nutrition Examination Survey (NHANES III) to estimate the prevalence of osteoporosis among adult women aged 50 and over. It is shown that in certain circumstances, the techniques that we have developed require only one-third of the sample size needed in SRS to achieve the desired precision. This results in a considerable reduction in time and cost compared to the standard SRS method.

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