In the study of paired comparisons (PC), items may be ranked or issues may be prioritized through subjective assessment of certain judges. PC models are developed and then used to serve the purpose of ranking. The PC models may be studied through classical or Bayesian approach. Bayesian inference is a modern statistical technique used to draw conclusions about the population parameters. Its beauty lies in incorporating prior information about the parameters into the analysis in addition to current information (i.e. data). The prior and current information are formally combined to yield a posterior distribution about the population parameters, which is the work bench of the Bayesian statisticians. However, the problems the Bayesians face cor...
Prior elicitation is the process of quantifying an expert's belief in the form of a probability dist...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...
The method of paired comparisons calls for the comparison of treatments presented in pairs to judges...
The method of paired comparisons may be regarded as a special rank order technique. It is a method l...
One technique being commonly studied these days because of its attractive applications for the compa...
We have formulated a Bayesian approach to paired comparison experimentation under the multi-binomial...
A probabilistic approach to build models for paired comparison experiments based on the comparison o...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
One of the main differences between classical statistics and Bayesian statistics is that the latter ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
We propose a Bayesian hypothesis testing procedure for comparing the distributions of paired samples...
Prior elicitation is the process of quantifying an expert's belief in the form of a probability dist...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...
The method of paired comparisons calls for the comparison of treatments presented in pairs to judges...
The method of paired comparisons may be regarded as a special rank order technique. It is a method l...
One technique being commonly studied these days because of its attractive applications for the compa...
We have formulated a Bayesian approach to paired comparison experimentation under the multi-binomial...
A probabilistic approach to build models for paired comparison experiments based on the comparison o...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
One of the main differences between classical statistics and Bayesian statistics is that the latter ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
International audienceA Bayesian methodology is proposed for constructing a parametric prior on two ...
We propose a Bayesian hypothesis testing procedure for comparing the distributions of paired samples...
Prior elicitation is the process of quantifying an expert's belief in the form of a probability dist...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...
It can be important in Bayesian analyses of complex models to construct informative prior distributi...