Adaptive cluster sampling randomized response model with electronically application

Mahmoud M. Mansour, E. A. Elrazik
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Abstract

It is difficult to estimate sensitive matters (e.g., addiction, drunken driving, and abortion) in population distributed over a large geographical area by conventional designs of sampling because of the social, political and security conditions that usually lead to their concentration in certain areas. An adaptive sampling scheme extending the initial sample by appropriate ‘network’ formations dependent on well-defined ‘neighborhoods’ brings about dramatic improvements exploiting the clustering tendencies of people by different places. On another hand to reduce non-response and response bias was needed to make people comfortable and to encourage truthful answers. So also we introduce a new technique to apply a randomized response by tablets, computers, mobile phones and etc. The relative efficiency and protection of the respondents of the proposed randomization device have been investigated. We illustrate our methods using real data from a survey study on the spread of the addiction phenomenon among high school students.
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电子应用的自适应整群抽样随机响应模型
由于社会、政治和安全条件通常导致敏感问题集中在某些地区,因此很难通过传统的抽样设计来估计分布在一个大地理区域的人口中的敏感问题(例如,成瘾、酒后驾驶和堕胎)。一种自适应抽样方案通过适当的“网络”形式扩展初始样本,依赖于明确定义的“社区”,从而极大地改善了人们在不同地方的聚集趋势。另一方面,减少无反应和反应偏差需要让人们感到舒适,并鼓励真实的回答。因此,我们也引入了一种新技术,通过平板电脑,电脑,手机等应用随机反应。已经调查了所建议的随机化装置的应答者的相对效率和保护。我们使用来自高中生成瘾现象传播的调查研究的真实数据来说明我们的方法。
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