Abstract Construction of confidence intervals or regions is an important part of statistical inference. The usual approach to constructing a confidence interval for a single parameter or confidence region for two or more parameters requires that the distribution of estimated parameters is known or can be assumed. In reality, the sampling distributions of parameters of biological importance are often unknown or difficult to be characterized. Distribution-free nonparametric resampling methods such as bootstrapping and permutation have been widely used to construct the confidence interval for a single parameter. There are also several parametric (ellipse) and nonparametric (convex hull peeling, bagplot and HPDregionplot) methods available for ...
[[abstract]]By a two-stage sampling procedure a confidence region for the largest and smallest means...
Confidence intervals and regions for the parameters of a distribution are constructed, following the...
In this paper we offer a unified approach to the problem of nonparametric regression on the unit int...
<div><p>Construction of confidence intervals or regions is an important part of statistical inferenc...
The two classical approaches in estimation theory are point estimation and confidence interval estim...
In this Master's thesis we investigate approaches for constructing approximate and exact confidence ...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
In this paper, we provide a method for constructing confidence intervals for the variance that exhib...
Includes bibliographical references (p. 168-171).We apply maximum likelihood methods for statistical...
The classic nonparametric confidence intervals for a difference or ratio of medians assume that the ...
Plotting two-parameter confidence regions is nontrivial. Numerical methods often rely on a computati...
Includes bibliographical references (pages 60-61)Confidence intervals are a very useful tool for mak...
<p>The empirical confidence regions for a range of probability levels ( = 0.005 to 0.5) are construc...
<p>The simulated population is an equal-proportional mixture of the observations sampled from two bi...
[[abstract]]By a two-stage sampling procedure a confidence region for the largest and smallest means...
Confidence intervals and regions for the parameters of a distribution are constructed, following the...
In this paper we offer a unified approach to the problem of nonparametric regression on the unit int...
<div><p>Construction of confidence intervals or regions is an important part of statistical inferenc...
The two classical approaches in estimation theory are point estimation and confidence interval estim...
In this Master's thesis we investigate approaches for constructing approximate and exact confidence ...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
In this paper, we provide a method for constructing confidence intervals for the variance that exhib...
Includes bibliographical references (p. 168-171).We apply maximum likelihood methods for statistical...
The classic nonparametric confidence intervals for a difference or ratio of medians assume that the ...
Plotting two-parameter confidence regions is nontrivial. Numerical methods often rely on a computati...
Includes bibliographical references (pages 60-61)Confidence intervals are a very useful tool for mak...
<p>The empirical confidence regions for a range of probability levels ( = 0.005 to 0.5) are construc...
<p>The simulated population is an equal-proportional mixture of the observations sampled from two bi...
[[abstract]]By a two-stage sampling procedure a confidence region for the largest and smallest means...
Confidence intervals and regions for the parameters of a distribution are constructed, following the...
In this paper we offer a unified approach to the problem of nonparametric regression on the unit int...