Efficient Bayes estimators of sensitive proportion with simple and mixture priors using direct and indirect responses

IF 0.6 4区 数学 Q4 STATISTICS & PROBABILITY
Nida Khan, Said Farooq Shah, S. M. Asim
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引用次数: 0

Abstract

Abstract In this study, efficient Bayes estimators of sensitive proportion are proposed. It is documented that indirect reports increase variances of the estimates. To counteract this increase in variances we divided the total sample size, n = n 1+n 2, such that n 1 individuals record direct responses and n 2 individuals record indirect responses. The decision that a group of individuals should report indirect or direct responses would be based on distinct known factors. Bayes estimates and subsequent posterior risks are calculated taking into account different prior distributions, loss functions and a generalized randomized response technique. The impact of design parameters and the number of responses obtained using direct and indirect questioning techniques on the relative efficiencies are investigated. Graphical and numerical results indicate that the proposed estimators are better than the existing.
使用直接和间接响应的简单先验和混合先验的敏感比例的有效贝叶斯估计
摘要本文提出了敏感比例的有效Bayes估计。据记载,间接报告会增加估计数的差异。为了抵消方差的增加,我们对总样本量进行了划分,n=n 1+n 2,使得n 1个个体记录直接反应,n 2个个体记录间接反应。一组个人应报告间接或直接反应的决定将基于不同的已知因素。贝叶斯估计和随后的后验风险是在考虑不同的先验分布、损失函数和广义随机响应技术的情况下计算的。研究了设计参数和使用直接和间接提问技术获得的回答数量对相对效率的影响。图形和数值结果表明,所提出的估计量优于现有的估计量。
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来源期刊
CiteScore
2.00
自引率
12.50%
发文量
320
审稿时长
7.5 months
期刊介绍: The Theory and Methods series intends to publish papers that make theoretical and methodological advances in Probability and Statistics. New applications of statistical and probabilistic methods will also be considered for publication. In addition, special issues dedicated to a specific topic of current interest will also be published in this series periodically, providing an exhaustive and up-to-date review of that topic to the readership.
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