Optimal Imputation Methods under Stratified Ranked Set Sampling

It is long familiar that the stratified ranked set sampling (SRSS) is more efficient than ranked set sampling (RSS) and stratified random sampling (StRS). The existence of missing values alter the final inference of any study. This paper is fundamental effort to suggest some combined and separate i...

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Main Authors: Shashi Bhushan, Anoop Kumar
Format: Article
Language:English
Published: Instituto Nacional de Estatística | Statistics Portugal 2025-02-01
Series:Revstat Statistical Journal
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Online Access:https://revstat.ine.pt/index.php/REVSTAT/article/view/501
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author Shashi Bhushan
Anoop Kumar
author_facet Shashi Bhushan
Anoop Kumar
author_sort Shashi Bhushan
collection DOAJ
description It is long familiar that the stratified ranked set sampling (SRSS) is more efficient than ranked set sampling (RSS) and stratified random sampling (StRS). The existence of missing values alter the final inference of any study. This paper is fundamental effort to suggest some combined and separate imputation methods in presence of missing data under SRSS. It has been shown that the proposed imputation methods become superior than the mean imputation method, ratio imputation method, Diana and Perri (2010) type imputation method and Sohail et al. (2018) type imputation methods. A simulation study is administered over two hypothetically drawn asymmetric populations.
format Article
id doaj-art-507a8a8045794928b055e28dfae53c88
institution Kabale University
issn 1645-6726
2183-0371
language English
publishDate 2025-02-01
publisher Instituto Nacional de Estatística | Statistics Portugal
record_format Article
series Revstat Statistical Journal
spelling doaj-art-507a8a8045794928b055e28dfae53c882025-02-06T10:52:39ZengInstituto Nacional de Estatística | Statistics PortugalRevstat Statistical Journal1645-67262183-03712025-02-0123110.57805/revstat.v23i1.501Optimal Imputation Methods under Stratified Ranked Set SamplingShashi Bhushan 0Anoop Kumar 1University of LucknowAmity University It is long familiar that the stratified ranked set sampling (SRSS) is more efficient than ranked set sampling (RSS) and stratified random sampling (StRS). The existence of missing values alter the final inference of any study. This paper is fundamental effort to suggest some combined and separate imputation methods in presence of missing data under SRSS. It has been shown that the proposed imputation methods become superior than the mean imputation method, ratio imputation method, Diana and Perri (2010) type imputation method and Sohail et al. (2018) type imputation methods. A simulation study is administered over two hypothetically drawn asymmetric populations. https://revstat.ine.pt/index.php/REVSTAT/article/view/501missing valuesimputationstratified ranked set sampling
spellingShingle Shashi Bhushan
Anoop Kumar
Optimal Imputation Methods under Stratified Ranked Set Sampling
Revstat Statistical Journal
missing values
imputation
stratified ranked set sampling
title Optimal Imputation Methods under Stratified Ranked Set Sampling
title_full Optimal Imputation Methods under Stratified Ranked Set Sampling
title_fullStr Optimal Imputation Methods under Stratified Ranked Set Sampling
title_full_unstemmed Optimal Imputation Methods under Stratified Ranked Set Sampling
title_short Optimal Imputation Methods under Stratified Ranked Set Sampling
title_sort optimal imputation methods under stratified ranked set sampling
topic missing values
imputation
stratified ranked set sampling
url https://revstat.ine.pt/index.php/REVSTAT/article/view/501
work_keys_str_mv AT shashibhushan optimalimputationmethodsunderstratifiedrankedsetsampling
AT anoopkumar optimalimputationmethodsunderstratifiedrankedsetsampling