This paper presents a new sampling-based methodology designed to facilitate the visual analysis of the confidence sets generated by an inference function such as the likelihood. This methodology generates a sample of parameters from a confidence distribution. This distribution is designed so that its probabilities on the parameter space are equal to the asymptotic coverage probabilities of the targeted confidence sets. Plotting these samples provides a picture of the inference function surface around the point estimator optimizing the inference function. Once the sample is created, one can also picture the profile inference function confidence sets for various functions of the parameters, all without further numerical optimization. The resu...
After reviewing pertinent literature on the estimation of sampling variances and confidence interval...
Summary In frequentist inference, we commonly use a single point (point estimator) or an interval (c...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...
The focus of this article is on the quantification of sampling variation in frequentist probabilisti...
<p>The focus of this article is on the quantification of sampling variation in frequentist probabili...
In this Master's thesis we investigate approaches for constructing approximate and exact confidence ...
In this thesis, we provide some new and interesting solutions to problems of computational inference...
Abstract Construction of confidence intervals or regions is an important part of statistical inferen...
<p>The plots on the left are for targets in interval 1 (i.e. <i>i</i> = 1), whereas the plots on the...
For discrete parametric models, approximate confidence limits perform poorly from a strict frequenti...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
Illustrating a simple, novel method for solving an array of statistical problems, Observed Confidenc...
The paper deals with some nonparametric methods for the construction of confidence sets; the empiric...
The objective is to develop a reliable method to build confidence sets for the Aumann mean of a rand...
<p>In case of small samples, asymptotic confidence sets may be inaccurate, with their actual coverag...
After reviewing pertinent literature on the estimation of sampling variances and confidence interval...
Summary In frequentist inference, we commonly use a single point (point estimator) or an interval (c...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...
The focus of this article is on the quantification of sampling variation in frequentist probabilisti...
<p>The focus of this article is on the quantification of sampling variation in frequentist probabili...
In this Master's thesis we investigate approaches for constructing approximate and exact confidence ...
In this thesis, we provide some new and interesting solutions to problems of computational inference...
Abstract Construction of confidence intervals or regions is an important part of statistical inferen...
<p>The plots on the left are for targets in interval 1 (i.e. <i>i</i> = 1), whereas the plots on the...
For discrete parametric models, approximate confidence limits perform poorly from a strict frequenti...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
Illustrating a simple, novel method for solving an array of statistical problems, Observed Confidenc...
The paper deals with some nonparametric methods for the construction of confidence sets; the empiric...
The objective is to develop a reliable method to build confidence sets for the Aumann mean of a rand...
<p>In case of small samples, asymptotic confidence sets may be inaccurate, with their actual coverag...
After reviewing pertinent literature on the estimation of sampling variances and confidence interval...
Summary In frequentist inference, we commonly use a single point (point estimator) or an interval (c...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...