Ratio-cum-product Type Estimators for Rare and Hidden Clustered Population.

Rajesh Singh, Rohan Mishra
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引用次数: 1

Abstract

The use of multi-auxiliary variables helps in increasing the precision of the estimators, especially when the population is rare and hidden clustered. In this article, four ratio-cum-product type estimators have been proposed using two auxiliary variables under adaptive cluster sampling (ACS) design. The expressions of the mean square error (MSE) of the proposed ratio-cum-product type estimators have been derived up to the first order of approximation and presented along with their efficiency conditions with respect to the estimators presented in this article. The efficiency of the proposed estimators over similar existing estimators have been assessed on four different populations two of which are of the daily spread of COVID-19 cases. The proposed estimators performed better than the estimators presented in this article on all four populations indicating their wide applicability and precision.

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稀有和隐藏聚类总体的比值-积型估计。
多辅助变量的使用有助于提高估计器的精度,特别是当人口稀少和隐藏聚类时。本文在自适应聚类抽样(ACS)设计下,提出了使用两个辅助变量的四种比积型估计。本文推导了一阶近似下所提出的比积型估计器的均方误差(MSE)表达式,并给出了它们相对于本文所提出的估计器的效率条件。在四个不同的人群中评估了所提出的估计器相对于类似现有估计器的效率,其中两个是每日传播COVID-19病例的人群。所提出的估计器比本文中提出的估计器在所有四种总体上表现得更好,表明它们具有广泛的适用性和精度。
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Ratio-cum-product Type Estimators for Rare and Hidden Clustered Population. Poisson Counts, Square Root Transformation and Small Area Estimation: Square Root Transformation. COVID-19: Optimal Design of Serosurveys for Disease Burden Estimation. Mortality Comparisons 'At a Glance': A Mortality Concentration Curve and Decomposition Analysis for India. A shared spatial model for multivariate extreme-valued binary data with non-random missingness.
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