Quantiles and percentiles represent useful statistical tools for describing the distribution of results and deriving reference intervals and performance specification in laboratory medicine. They are commonly intended as the sample estimate of a population parameter and therefore they need to be presented with a confidence interval (CI). In this work we discuss three methods to estimate CI on quantiles and percentiles using parametric, nonparametric and resampling (bootstrap) approaches. The result of our numerical simulations is that parametric methods are always more accurate regardless of sample size when the procedure is appropriate for the distribution of results for both extreme (2.5th and 97.5th) and central (25th, 50th and 75th) per...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...
Confidence intervals for the median of estimators or other quantiles were proposed as a substitute f...
When working with a single random variable, the simplest and most obvious approach when estimating a...
Quantiles and percentiles represent useful statistical tools for describing the distribution of resu...
Introduction: Quality indicators (QI) based on percentiles are widely used for managing quality in l...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
Introduction: Quality indicators (QI) based on percentiles are widely used for managing quality in l...
We propose a new empirical likelihood approach which can be used to construct non-parametric (design...
Confidence intervals provide a way of reporting an estimate of a population quantile along with some...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
[[abstract]]Quantile information is useful in business and engineering applications, but the exact s...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
Results from exploratory three-way analysis techniques such as CANDECOMP/PARAFAC and Tucker3 analysi...
Suppose we have a random sample from a non-normal distribution known as the quadratic-normal distrib...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...
Confidence intervals for the median of estimators or other quantiles were proposed as a substitute f...
When working with a single random variable, the simplest and most obvious approach when estimating a...
Quantiles and percentiles represent useful statistical tools for describing the distribution of resu...
Introduction: Quality indicators (QI) based on percentiles are widely used for managing quality in l...
Quantiles, which are also known as values-at-risk in finance, frequently arise in practice as measur...
Introduction: Quality indicators (QI) based on percentiles are widely used for managing quality in l...
We propose a new empirical likelihood approach which can be used to construct non-parametric (design...
Confidence intervals provide a way of reporting an estimate of a population quantile along with some...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
[[abstract]]Quantile information is useful in business and engineering applications, but the exact s...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
Results from exploratory three-way analysis techniques such as CANDECOMP/PARAFAC and Tucker3 analysi...
Suppose we have a random sample from a non-normal distribution known as the quadratic-normal distrib...
In this thesis, various construction methods for simultaneous confidence intervals for quantiles are...
Confidence intervals for the median of estimators or other quantiles were proposed as a substitute f...
When working with a single random variable, the simplest and most obvious approach when estimating a...