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Sample allocation problem in multi-objective multivariate stratified sample surveys under two stage randomized response model

机译:两阶段随机响应模型下多目标多元分层样本调查中的样本分配问题

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Warner (1965) introduced the randomized response model as an alternative survey technique for socially undesirable or incriminating behaviour questions in order to reduce response error, protect a respondent’s privacy, and increase response rates. In multivariate stratified surveys with multiple randomised response data the choice of optimum sample sizes from various strata may be viewed as a multi-objective nonlinear programming problem. The allocation thus obtained may be called a “compromise allocation” in sampling literature. In this paper, we have formulated two stage stratified Warner’s Randomised Response model ( RRM ) as a multi-objective integer non-liner optimization problem. In this problem of RRM we have minimized the square root of coefficient of variations instead of variations for different characteristics because the coefficient of variation is unit free, subject to the linear and quadratic cost constraint. The multi-objective optimization problem of RRM has been solved by lexicographic goal programming integrated with fixed priority - distance method. The solution obtained by lexicographic goal programming Integrated with fixed priority - distance have been compared with various existing approaches namely the value function approach, goal programming techniques, ?- constraint method and distance-based method and Khuri & Cornel distance based method. A numerical example is also been presented to illustrate the computational details. https://doi.org/10.28919/jmcs/3376
机译:Warner(1965)引入了随机响应模型,作为一种针对社会上不受欢迎或有罪的行为问题的替代调查技术,以减少响应错误,保护受访者的隐私并提高响应率。在具有多个随机响应数据的多变量分层调查中,从各个层次中选择最佳样本量可被视为多目标非线性规划问题。这样获得的分配在抽样文献中可以称为“折衷分配”。在本文中,我们将两阶段分层的Warner随机响应模型(RRM)公式化为多目标整数非线性优化问题。在RRM的这个问题中,我们将变化系数的平方根最小化,而不是针对不同特性的变化最小化,因为变化系数是无单位的,受线性和二次成本约束。 RRM的多目标优化问题已通过结合固定优先级-距离方法的字典目标规划得以解决。通过词典编目目标编程获得的解决方案与固定优先级-距离集成在一起,已与各种现有方法进行了比较,这些方法包括值函数方法,目标编程技术,α-约束方法和基于距离的方法以及基于Khuri和Cornel距离的方法。还提供了一个数值示例来说明计算细节。 https://doi.org/10.28919/jmcs/3376

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