A Bayesian approach to estimating the intraclass correlation coefficient
Abstract
A Bayesian approach to estimating the intraclass correlation coefficient was used for this research project. The background of the intraclass correlation coefficient, a summary of its standard estimators, and a review of basic Bayesian terminology and methodology were presented. The conditional posterior density of the intraclass correlation coefficient was then derived and estimation procedures related to this derivation were shown in detail. Three examples of applications of the conditional posterior density to specific data sets were also included. Two sets of simulation experiments were performed to compare the mean and mode of the conditional posterior density of the intraclass correlation coefficient to more traditional estimators. Non-Bayesian methods of estimation used were: the methods of analysis of variance and maximum likelihood for balanced data; and the methods of MIVQUE (Minimum Variance Quadratic Unbiased Estimation) and maximum likelihood for unbalanced data. The overall conclusion of this research project was that Bayesian estimates of the intraclass correlation coefficient can be appropriate, useful and practical alternatives to traditional methods of estimation.
Subject Area
Biostatistics|Statistics
Recommended Citation
Palmer, Judy Lynn, "A Bayesian approach to estimating the intraclass correlation coefficient" (1988). Texas Medical Center Dissertations (via ProQuest). AAI9020190.
https://digitalcommons.library.tmc.edu/dissertations/AAI9020190