2019
DOI: 10.24200/sci.2019.50976.1946
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On use of Ranked Set Sampling for estimating Super-population Total: Gamma Population Model

Abstract: Utilization of superpopulation models for estimation of population parameters is an advantageous practice, when it is easy to recognize the relationship between the study variable and one or more auxiliary variables. This article is concerned with estimation of finite population total under ranked set sampling without replacement (RSSWOR) by utilizing model relationship, specially gamma population model (GPM), between the study variable and the auxiliary variable. Behavior of the proposed estimator, in terms o… Show more

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Cited by 5 publications
(14 citation statements)
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“…For real data, results are obtained for HPM (M = 1), LPM (M = 2), the quadratic model (M = 3) and the higher order polynomial (cubic) model (M = 4). The estimated error variances ofτ (y) are obtained from Equation (35) based on different estimators of σ 2 . Note that all results given in Tables 1-4 are provided for ridge regression estimator with certain choices of v as the variance estimator given in n Equation ( 34) is a special case of variance estimator in Equation (35) with v = 0.…”
Section: Simulationsmentioning
confidence: 99%
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“…For real data, results are obtained for HPM (M = 1), LPM (M = 2), the quadratic model (M = 3) and the higher order polynomial (cubic) model (M = 4). The estimated error variances ofτ (y) are obtained from Equation (35) based on different estimators of σ 2 . Note that all results given in Tables 1-4 are provided for ridge regression estimator with certain choices of v as the variance estimator given in n Equation ( 34) is a special case of variance estimator in Equation (35) with v = 0.…”
Section: Simulationsmentioning
confidence: 99%
“…The estimated error variances ofτ (y) are obtained from Equation (35) based on different estimators of σ 2 . Note that all results given in Tables 1-4 are provided for ridge regression estimator with certain choices of v as the variance estimator given in n Equation ( 34) is a special case of variance estimator in Equation (35) with v = 0. The ESPE for different combinations of M , v and n is enlisted in third column of Tables 1-2.…”
Section: Simulationsmentioning
confidence: 99%
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“…Some other useful references are, Irfan et al [17], Abid et al. [18], Abid et al [19], Javed et al [20], Naz et al [21], Younis and Shabbir [22], Ahmed and Shabbir [23] and Nazir et al [24].…”
Section: Introductionmentioning
confidence: 99%
“…The derivation of the likelihood function for parameter estimation based on double-ranked set sampling (DRSS) designs were used by [22] for the estimation of the parameters of the power-generalized Weibull distribution. The authors of [23] derived the estimate of the finite population total under Ranked Set Sampling Without Replacement (RSSWOR), employing the model relationship, especially Gamma Population Model (GPM), between the study and auxiliary variables. The authors of [24] considered the estimation of the scale parameter of Levy distribution using a ranked set sample; they derived the best linear unbiased estimator and its variance based on a ranked set sample.…”
mentioning
confidence: 99%