Kernel density estimation is probably the most widely used non parametric statistical method for estimating probability densities. In this paper, we investigate the performance of kernel density estimator based on stratified simple and ranked set sampling. Some asymptotic properties of kernel estimator are established under both sampling schemes. Simulation studies are designed to examine the performance of the proposed estimators under varying distributional assumptions. These findings are also illustrated with the help of a dataset on bilirubin levels in babies in a neonatal intensive care unit
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
We present a kernel estimator for the density of a variable when sampling probabilities depend on th...
We propose kernel type estimators for the density function of non negative random variables, where t...
Kernel density estimation is probably the most widely used non parametric statistical method for est...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
This article is directed at the problem of reliability estimation using ranked set sampling. A nonpa...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
The mode is a measure of the central tendency as well as the most probable value. Additionally, the ...
The kernel-based estimators of a quantile function based on stratified samples of simple random samp...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
We note that the uniform is the optimal kernel density for kernel estimation of the distribution fun...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
This article is intended to investigate the performance of two types of stratified regression estima...
While robust parameter estimation has been well studied in parametric density es-timation, there has...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
We present a kernel estimator for the density of a variable when sampling probabilities depend on th...
We propose kernel type estimators for the density function of non negative random variables, where t...
Kernel density estimation is probably the most widely used non parametric statistical method for est...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
This article is directed at the problem of reliability estimation using ranked set sampling. A nonpa...
In this paper, we consider the non-parametric, kernel estimate of the density, f(x), for data drawn ...
The mode is a measure of the central tendency as well as the most probable value. Additionally, the ...
The kernel-based estimators of a quantile function based on stratified samples of simple random samp...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
We note that the uniform is the optimal kernel density for kernel estimation of the distribution fun...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
This article is intended to investigate the performance of two types of stratified regression estima...
While robust parameter estimation has been well studied in parametric density es-timation, there has...
The purpose of the current work is to introduce stratified bivariate ranked set sampling (SBVRSS) an...
We present a kernel estimator for the density of a variable when sampling probabilities depend on th...
We propose kernel type estimators for the density function of non negative random variables, where t...