Article ID Journal Published Year Pages File Type
10328169 Computational Statistics & Data Analysis 2005 22 Pages PDF
Abstract
A Bayesian method for finding an optimal ranking in scalar functions of K population parameters is developed. This is based on the paired comparison experimental arrangement whose results can naturally be represented by a completely oriented graphical model. Introducing posterior preference probabilities satisfying a strong stochastic transitivity condition to the model, a criterion for the optimal ranking is suggested. Necessary theories involved in the method and some computational aspects are provided. As illustrated examples, ranking in generalized variances of K multivariate normal populations and in products of independent normal means are given.
Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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