This article is intended to investigate the performance of two types of stratified regression estimators, namely the separate and the combined estimator, using stratified ranked set sampling (SRSS), introduced by Samawi (1996). The expressions for mean and variance of the proposed estimates are derived and are shown to be unbiased. A simulation study is designed to compare the efficiency of SRSS relative to other sampling procedure under varying model scenarios. Our investigation indicates that the regression estimator of the population mean obtained through an SRSS becomes more efficient than the crude sample mean estimator using stratified simple random sampling. These findings are also illustrated with the help of a data set on bilirubin...
The performance of a regression estimator based on the double ranked set sample (DRSS) scheme, intro...
Ranked set sampling (RSS) utilizes inexpensive auxiliary information about the ranking of the units ...
Stratified percentile ranked set sampling (SPRSS) method is sug-gested for estimating the population...
This article is intended to investigate the performance of two types of stratified regression estima...
This article is intended to investigate the performance of two types of stratified regression estima...
Two types of stratified regression estimators for the population mean, the separate and the combined...
Two types of stratified regression estimators for the population mean, the separate and the combined...
We investigate the relative performance of stratified bivariate ranked set sampling (SBVRSS), with r...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
Georgia Southern Examines Regression Estimators for Different Stratified Sampling Scheme
Stratified extreme ranked set sample (SERSS) is introduced. The performance of the combined and sepa...
We proposed an alternative two-phase stratified ranked set sampling. A comparison of the performance...
Stratified Diagonal Ranked Set Sampling (SDRSS) was compared with Stratified Simple Random Sampling ...
Kernel density estimation is probably the most widely used non parametric statistical method for est...
The performance of a regression estimator based on the double ranked set sample (DRSS) scheme, intro...
Ranked set sampling (RSS) utilizes inexpensive auxiliary information about the ranking of the units ...
Stratified percentile ranked set sampling (SPRSS) method is sug-gested for estimating the population...
This article is intended to investigate the performance of two types of stratified regression estima...
This article is intended to investigate the performance of two types of stratified regression estima...
Two types of stratified regression estimators for the population mean, the separate and the combined...
Two types of stratified regression estimators for the population mean, the separate and the combined...
We investigate the relative performance of stratified bivariate ranked set sampling (SBVRSS), with r...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
Georgia Southern Examines Regression Estimators for Different Stratified Sampling Scheme
Stratified extreme ranked set sample (SERSS) is introduced. The performance of the combined and sepa...
We proposed an alternative two-phase stratified ranked set sampling. A comparison of the performance...
Stratified Diagonal Ranked Set Sampling (SDRSS) was compared with Stratified Simple Random Sampling ...
Kernel density estimation is probably the most widely used non parametric statistical method for est...
The performance of a regression estimator based on the double ranked set sample (DRSS) scheme, intro...
Ranked set sampling (RSS) utilizes inexpensive auxiliary information about the ranking of the units ...
Stratified percentile ranked set sampling (SPRSS) method is sug-gested for estimating the population...