In fields such as biology, medical sciences, sociology, and economics researchers often face the situation where the number of available observations, or the amount of available information, is sufficiently small that approximations based on the normal distribution may be unreliable. Theoretical work over the last quarter-century has led to new likelihood-based methods that lead to very accurate approximations in finite samples, but this work has had limited impact on statistical practice. This book illustrates by means of realistic examples and case studies how to use the new theory, and investigates how and when it makes a difference to the resulting inference. The treatment is oriented towards practice and comes with code in the R langua...
This paper deals with the application of higher order asymptotics for likelihood-based inference to ...
This book discusses examples in parametric inference with R. Combining basic theory with modern appr...
The target of this paper is to discuss the existent difference of Asymptotic Theory in Statistics co...
In fields such as biology, medical sciences, sociology, and economics researchers often face the sit...
First practical treatment of small-sample asymptotics, enabling practitioners to apply new methods w...
We outline how modern likelihood theory, which provides essentially exact inferences in a variety of...
We outline how modern likelihood theory, which provides essentially exact inferences in a variety of...
The aim of this paper is to review concepts, theory, and applications of small sample asymptotic tec...
Asymptotic approaches are widely used in statistics. Generally, I recognize two applications of asym...
An approach for modifying the results of asymptotic theory to improve the performance of statistical...
The objective of this thesis is to show how the empirical likelihood method can be used to analyse t...
The likelihood function represents the basic ingredient of many commonly used statistical methods fo...
Researchers often have difficulties collecting enough data to test their hypotheses, either because ...
This paper deals with the application of higher order asymptotics for likelihood-based inference to ...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
This paper deals with the application of higher order asymptotics for likelihood-based inference to ...
This book discusses examples in parametric inference with R. Combining basic theory with modern appr...
The target of this paper is to discuss the existent difference of Asymptotic Theory in Statistics co...
In fields such as biology, medical sciences, sociology, and economics researchers often face the sit...
First practical treatment of small-sample asymptotics, enabling practitioners to apply new methods w...
We outline how modern likelihood theory, which provides essentially exact inferences in a variety of...
We outline how modern likelihood theory, which provides essentially exact inferences in a variety of...
The aim of this paper is to review concepts, theory, and applications of small sample asymptotic tec...
Asymptotic approaches are widely used in statistics. Generally, I recognize two applications of asym...
An approach for modifying the results of asymptotic theory to improve the performance of statistical...
The objective of this thesis is to show how the empirical likelihood method can be used to analyse t...
The likelihood function represents the basic ingredient of many commonly used statistical methods fo...
Researchers often have difficulties collecting enough data to test their hypotheses, either because ...
This paper deals with the application of higher order asymptotics for likelihood-based inference to ...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
This paper deals with the application of higher order asymptotics for likelihood-based inference to ...
This book discusses examples in parametric inference with R. Combining basic theory with modern appr...
The target of this paper is to discuss the existent difference of Asymptotic Theory in Statistics co...