Computation of separate ratio and regression estimator under Neutrosophic stratified sampling: an application to climate data

In this article, we introduce a novel approach by presenting separate ratio and regression estimators in the context of neutrosophic stratified sampling for the very first time, incorporating auxiliary variables. We have conducted a thorough analysis to estimate these newly proposed estimators'...

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Bibliographic Details
Main Authors: Abhishek Singh, Hemant Kulkarni, Florentin Smarandache, Gajendra Vishwakarma
Format: Article
Language:English
Published: Ayandegan Institute of Higher Education, 2024-12-01
Series:Journal of Fuzzy Extension and Applications
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Online Access:https://www.journal-fea.com/article_193258_412d4a77ab016a006c679638a2ceacfb.pdf
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Summary:In this article, we introduce a novel approach by presenting separate ratio and regression estimators in the context of neutrosophic stratified sampling for the very first time, incorporating auxiliary variables. We have conducted a thorough analysis to estimate these newly proposed estimators' bias and Mean Square Error (MSE) up to the first-order approximation. Theoretically using efficiency comparison criteria, our findings demonstrate the superior performance of these estimators compared to traditional unbiased estimators. Also, numerically based on real-life and artificial data, we have shown the supremacy of the neutrosophic stratified sampling over neutrosophic simple random sampling along with the supremacy of our proposed neutrosophic separate stratified estimators over neutrosophic stratified unbiased estimator. Moreover, our research highlights the enhanced reliability of neutrosophic stratified estimators when contrasted with classical stratified estimators.
ISSN:2783-1442
2717-3453