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Best Quadratic Unbiased Prediction in a General Linear Model with Stochastic Regression Coefficients
Authors:Xu-Qing Liu  Yan-Dong Wu  Jian-Ying Rong
Institution:1. Faculty of Mathematics and Physics , Huaiyin Institute of Technology , Huai'an, P.R. China liuxuqing688@gmail.com;3. Faculty of Mathematics and Physics , Huaiyin Institute of Technology , Huai'an, P.R. China;4. Department of Foundation Courses , Huai'an College of Information Technology , Huai'an, P.R. China
Abstract:In this article, we discuss on how to predict a combined quadratic parametric function of the form β H β + hσ2 in a general linear model with stochastic regression coefficients denoted by y  =  X β +  e . Firstly, the quadratic predictability of β H β + hσ2 is investigated to obtain a quadratic unbiased predictor (QUP) via a general method of structuring an unbiased estimator. This QUP is also optimal in some situations and therefore we hope it will be a fine predictor. To show this idea, we apply the Lagrange multipliers method to this problem and finally reach the expected conclusion through permutation matrix techniques.
Keywords:Best quadratic unbiased predictor  Permutation matrix  Quadratic predictability  Stochastic regression coefficient
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