This article deals with determination of a sample size that guarantees the success of a trial. We follow a Bayesian approach and we say an experiment is successful if it yields a large posterior probability that an unknown parameter of interest (an unknown treatment effect or an effects-difference) is greater than a chosen threshold. In this context, a straightforward sample size criterion is to select the minimal number of observations so that the predictive probability of a successful trial is sufficiently large. In the paper we address the most typical criticism to Bayesian methods-their sensitivity to prior assumptions-by proposing a robust version of this sample size criterion. Specifically, instead of a single distribution, we conside...
In sequential experiments the sample size is not planned in advance. Data are progressively collecte...
[[abstract]]In clinical research, parameters required for sample size calculation are usually unknow...
Current practice for sample size computations in clinical trials is largely based on frequentist or ...
This article considers a robust Bayesian approach to the sample size determination problem. We focus...
This article considers sample size determination methods based on Bayesian credible intervals for th...
This article considers sample size determination methods based on Bayesian credible intervals for θ,...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
The problem motivating this article is the determination of sample size in clinical trials under nor...
Bayesian analysis of a non-inferiority trial is advantageous in allowing direct probability statemen...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
In clinical research, parameters required for sample size calculation are usually unknown. A typical...
Advisors: Rama Lingham.Committee members: Sanjib Basu; Alan Polansky.Sample Size Determination is an...
In this paper we discuss a Behavioural Bayes approach to the sample size question in clinical trials...
One of the most important problems in designing an experiment or a survey is sample size determinati...
In sequential experiments the sample size is not planned in advance. Data are progressively collecte...
[[abstract]]In clinical research, parameters required for sample size calculation are usually unknow...
Current practice for sample size computations in clinical trials is largely based on frequentist or ...
This article considers a robust Bayesian approach to the sample size determination problem. We focus...
This article considers sample size determination methods based on Bayesian credible intervals for th...
This article considers sample size determination methods based on Bayesian credible intervals for θ,...
This paper presents a simple Bayesian approach to sample size determination in clinical trials. It i...
The problem motivating this article is the determination of sample size in clinical trials under nor...
Bayesian analysis of a non-inferiority trial is advantageous in allowing direct probability statemen...
Design and analysis of clinical trials imply decisions that often involve multiple parties. We focus...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
In clinical research, parameters required for sample size calculation are usually unknown. A typical...
Advisors: Rama Lingham.Committee members: Sanjib Basu; Alan Polansky.Sample Size Determination is an...
In this paper we discuss a Behavioural Bayes approach to the sample size question in clinical trials...
One of the most important problems in designing an experiment or a survey is sample size determinati...
In sequential experiments the sample size is not planned in advance. Data are progressively collecte...
[[abstract]]In clinical research, parameters required for sample size calculation are usually unknow...
Current practice for sample size computations in clinical trials is largely based on frequentist or ...