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Joint confidence regions in the multivariate calibration problem
Authors:Thomas Mathew  Manoj Kumar Sharma
Affiliation:

a Department of Mathematics and Statistics, University of Maryland, 1000 Hilltop Circle, Baltimore, MD 21250, USA

b LifeScan, Inc., Johnson & Johnson Company, Milpitas, CA 95035, USA

Abstract:Consider a vector valued response variable related to a vector valued explanatory variable through a normal multivariate linear model. The multivariate calibration problem deals with statistical inference on unknown values of the explanatory variable. The problem addressed is the construction of joint confidence regions for several unknown values of the explanatory variable. The problem is investigated when the variance covariance matrix is a scalar multiple of the identity matrix and also when it is a completely unknown positive definite matrix. The problem is solved in only two cases: (i) the response and explanatory variables have the same dimensions, and (ii) the explanatory variable is a scalar. In the former case, exact joint confidence regions are derived based on a natural pivot statistic. In the latter case, the joint confidence regions are only conservative. Computational aspects and the practical implementation of the confidence regions are discussed and illustrated using an example.
Keywords:Conservative confidence region  Multivariate calibration  Multivariate linear model  Non-central chisquare distribution  Non-central F distribution  Wishart distribution
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