Optimal Allocation in Small Area Mean Estimation Using Stratified Sampling in the Presence of Non-Response

Ongoma Jackson, A. Anekeya, Okuto Erick
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引用次数: 1

Abstract

Sample survey provides reliable current statistics for large areas or sub-population (domains) with large sample sizes. There is a growing demand for reliable small area statistics, however, the sample sizes are too small to provide direct (or area specific) estimators with acceptable and reliable accuracy. This study gives theoretical description of the estimation of small area mean by use of stratified sampling with a linear cost function in the presence of non-response. The estimation of small area mean is proposed using auxiliary information in which the study and auxiliary variable suffers from non-response during sampling. Optimal sample sizes have been obtained by minimizing the cost of survey for specific precision within a given cost using lagrangian function multiplier lambda and Partial Differential Equations (PDEs). Results demonstrate that as the values of the respondent sample increases sample units that supply information to study and auxiliary variable tends to small area population size, the non-response sample unit tends to sample units that supply the information as the sampling rate tends to one. From theoretic analysis it is practical that the Mean Square Error will decrease as the sub-sampling fraction and auxiliary characters increase. As the sub-sampling fraction increases and the value of beta increases then the value of large sample size is minimized with a reduction of Lagrangian multiplier value which minimizes the cost function.
无响应情况下分层抽样小面积均值估计的最优分配
抽样调查为大样本量的大面积或亚人口(域)提供可靠的当前统计数据。对可靠的小区域统计数据的需求日益增长,然而,样本量太小,无法提供具有可接受和可靠精度的直接(或特定区域)估计。本文给出了在无响应情况下用线性代价函数分层抽样估计小面积均值的理论描述。提出了利用辅助信息估计小面积均值的方法,其中研究对象和辅助变量在抽样过程中存在无响应。利用拉格朗日函数乘子lambda和偏微分方程(PDEs)在给定的成本范围内,通过最小化特定精度的调查成本来获得最佳样本量。结果表明,随着被调查样本的数值增加,提供信息的样本单位增加,辅助变量趋向于小区域人口规模,随着抽样率趋向于1,无响应样本单位趋向于提供信息的样本单位。从理论分析来看,均方误差随子采样分数和辅助特性的增大而减小是可行的。随着子抽样分数的增加和β值的增加,大样本量的值通过拉格朗日乘子值的减小而最小化,从而使成本函数最小化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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