变换种群法下的两阶段自适应聚类抽样

IF 0.8 Q2 MATHEMATICS
Yashpal Singh Raghav, Rajesh Singh, Rohan Mishra, Abdullah Ali H. Ahmadini, Nitesh Kumar Adichwal, Irfan Ali
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引用次数: 0

摘要

摘要 在调查抽样中,可能会出现无法获得辅助变量的总体平均值信息的情况,但如果研究人员选择这样做,就可以获得辅助变量的总体平均值信息。在这种情况下使用的抽样设计是两阶段抽样设计。这种设计在 SRSWOR 中得到了广泛的研究,但在所研究的人口稀少或成群的情况下还没有得到研究。众所周知,当研究对象是稀少或成块的人群时,自适应聚类抽样(ACS)设计更有效,因此我们在本文中提出了变换人群下的两阶段自适应聚类抽样方法,并在此设计中进一步提出了比率和乘积估计器以及广义稳健比率型估计器。所提估计器的偏差和 MSE 已推导并给出了一阶近似值。此外,还利用模拟研究分析了所提估计器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Two Phase Adaptive Cluster Sampling Under Transformed Population Approach

Two Phase Adaptive Cluster Sampling Under Transformed Population Approach

Abstract

In survey sampling, it might happen that information on the population mean of the auxiliary variable is not available, but it can be obtained if the researcher opts for it. The sampling design to be used in such a case is the Two-Phase sampling design. This design has been studied extensively in SRSWOR, but it has not been studied when the population under study is rare or clumped. It is known that when the population under study is rare or clumped, adaptive cluster sampling (ACS) design is more efficient, and therefore in this paper we have proposed the Two-Phase Adaptive Cluster Sampling Under Transformed Population Approach and further proposed ratio and product estimator and a generalized robust ratio type estimator in this design. The bias and MSE of the proposed estimators have been derived and presented up to the first order of approximation. Further, the performance of the proposed estimators has been analyzed using simulation studies.

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来源期刊
CiteScore
1.50
自引率
42.90%
发文量
127
期刊介绍: Lobachevskii Journal of Mathematics is an international peer reviewed journal published in collaboration with the Russian Academy of Sciences and Kazan Federal University. The journal covers mathematical topics associated with the name of famous Russian mathematician Nikolai Lobachevsky (Lobachevskii). The journal publishes research articles on geometry and topology, algebra, complex analysis, functional analysis, differential equations and mathematical physics, probability theory and stochastic processes, computational mathematics, mathematical modeling, numerical methods and program complexes, computer science, optimal control, and theory of algorithms as well as applied mathematics. The journal welcomes manuscripts from all countries in the English language.
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