This paper presents a new random weighting method for confidence interval estimation for the sample -quantile. A theory is established to extend ordinary random weighting estimation from a non-smoothed function to a smoothed function, such as a kernel function. Based on this theory, a confidence interval is derived using the concept of backward critical points. The resultant confidence interval has the same length as that derived by ordinary random weighting estimation, but is distribution-free, and thus it is much more suitable for practical applications. Simulation results demonstrate that the proposed random weighting method has higher accuracy than the Bootstrap method for confidence interval estimation
If the distribution of random variable is uknown, we are not able to figure out the value of theoret...
Quantiles and percentiles represent useful statistical tools for describing the distribution of resu...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...
We propose a new empirical likelihood approach which can be used to construct non-parametric (design...
This paper presents a newrandomweightingmethod forestimation of one-sided confidenceintervals in dis...
Thus far, likelihood-based interval estimates for quantiles have not been studied in the literature ...
This paper presents a new random weighting method for smoothed quantile processes. A theory is estab...
Thus far, likelihood-based interval estimates for quantiles have not been studied in the literature ...
Confidence intervals for the median of estimators or other quantiles were proposed as a substitute f...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
In this paper a simple way to obtain empirical likelihood type confidence intervals for the mean und...
When working with a single random variable, the simplest and most obvious approach when estimating a...
This article presents new theories of random weighting estimation for quantile processes and negativ...
Rubin's method (Rubin 1981) is applied to construct Bayesian bootstrap confidence intervals for the ...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
If the distribution of random variable is uknown, we are not able to figure out the value of theoret...
Quantiles and percentiles represent useful statistical tools for describing the distribution of resu...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...
We propose a new empirical likelihood approach which can be used to construct non-parametric (design...
This paper presents a newrandomweightingmethod forestimation of one-sided confidenceintervals in dis...
Thus far, likelihood-based interval estimates for quantiles have not been studied in the literature ...
This paper presents a new random weighting method for smoothed quantile processes. A theory is estab...
Thus far, likelihood-based interval estimates for quantiles have not been studied in the literature ...
Confidence intervals for the median of estimators or other quantiles were proposed as a substitute f...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
In this paper a simple way to obtain empirical likelihood type confidence intervals for the mean und...
When working with a single random variable, the simplest and most obvious approach when estimating a...
This article presents new theories of random weighting estimation for quantile processes and negativ...
Rubin's method (Rubin 1981) is applied to construct Bayesian bootstrap confidence intervals for the ...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
If the distribution of random variable is uknown, we are not able to figure out the value of theoret...
Quantiles and percentiles represent useful statistical tools for describing the distribution of resu...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...