In this paper, we propose and evaluate the performance of different parametric and nonparametric estimators for the population coefficient of variation considering Ranked Set Sampling (RSS) under normal distribution. The performance of the proposed estimators was assessed based on the bias and relative efficiency provided by a Monte Carlo simulation study. An application in anthropometric measurements data from a human population is also presented. The results showed that the proposed estimators via RSS present an expressively lower mean squared error when compared to the usual estimator, obtained via Simple Random Sampling. Also, it was verified the superiority of the maximum likelihood estimator, given the necessary assumptions of normali...
The foundation of any statistical inference depends on the collection of required data through some ...
In this paper a new sampling procedure for estimating the population mean is introduced. The perform...
The closed-form maximum likelihood estimators (MLEs) of population mean and variance under ranked se...
In this paper, we propose and evaluate the performance of different parametric and nonparametric est...
The present article discusses the issue of population mean estimation in the ranked set sampling fra...
Many variations of ranked set sampling methods have been studied for estimating the population mean....
This paper proposes a sampling procedure called selected ranked set sampling (SRSS), in which only s...
SUMMARY. When the experimental or sampling units in a study can be more easily ranked than quantifie...
Abstract. In statistical surveys, if the measurements of sampling units ac-cording to the variable u...
Abstract: In this paper, Improvement over general and wider class of estimators of finite population...
In this paper, we propose modified ratio estimators using some known values of coefficient of variat...
Many sampling methods have been suggested for estimating the population median. In the situation whe...
The use of ranked set sample to estimate the population mean is well known for its advantages over u...
In this paper we address the problem of estimation of the variance of a normal population based on a...
AbstractThe closed-form maximum likelihood estimators (MLEs) of population mean and variance under r...
The foundation of any statistical inference depends on the collection of required data through some ...
In this paper a new sampling procedure for estimating the population mean is introduced. The perform...
The closed-form maximum likelihood estimators (MLEs) of population mean and variance under ranked se...
In this paper, we propose and evaluate the performance of different parametric and nonparametric est...
The present article discusses the issue of population mean estimation in the ranked set sampling fra...
Many variations of ranked set sampling methods have been studied for estimating the population mean....
This paper proposes a sampling procedure called selected ranked set sampling (SRSS), in which only s...
SUMMARY. When the experimental or sampling units in a study can be more easily ranked than quantifie...
Abstract. In statistical surveys, if the measurements of sampling units ac-cording to the variable u...
Abstract: In this paper, Improvement over general and wider class of estimators of finite population...
In this paper, we propose modified ratio estimators using some known values of coefficient of variat...
Many sampling methods have been suggested for estimating the population median. In the situation whe...
The use of ranked set sample to estimate the population mean is well known for its advantages over u...
In this paper we address the problem of estimation of the variance of a normal population based on a...
AbstractThe closed-form maximum likelihood estimators (MLEs) of population mean and variance under r...
The foundation of any statistical inference depends on the collection of required data through some ...
In this paper a new sampling procedure for estimating the population mean is introduced. The perform...
The closed-form maximum likelihood estimators (MLEs) of population mean and variance under ranked se...