Proceedings of the Korean Statistical Society Conference (한국통계학회:학술대회논문집)
- 2002.05a
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- Pages.73-78
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- 2002
A Bayesian Comparison of Two Multivariate Normal Genralized Variances
Abstract
In this paper we develop a method for constructing a Bayesian HPD (highest probability density) interval of a ratio of two multivariate normal generalized variances. The method gives a way of comparing two multivariate populations in terms of their dispersion or spread, because the generalized variance is a scalar measure of the overall multivariate scatter. Fully parametric frequentist approaches for the interval is intractable and thus a Bayesian HPD(highest probability densith) interval is pursued using a variant of weighted Monte Carlo (WMC) sampling based approach introduced by Chen and Shao(1999). Necessary theory involved in the method and computation is provided.
Keywords
- HPD interval;
- multivarite normal population;
- ratio of two generalized variances;
- vague prior;
- weighted Monte Carlo approach