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Optimal designs for minimising covariances among parameter estimators in a linear model
Authors:S Mandal  B Torsney  M Chowdhury
Institution:1. Department of Statistics, University of Manitoba, Winnipeg, MB, Canada;2. School of Mathematics and Statistics, University of Glasgow, Glasgow, UK;3. Department of Community Health Sciences, University of Calgary, Calgary, AB, Canada
Abstract:We construct approximate optimal designs for minimising absolute covariances between least‐squares estimators of the parameters (or linear functions of the parameters) of a linear model, thereby rendering relevant parameter estimators approximately uncorrelated with each other. In particular, we consider first the case of the covariance between two linear combinations. We also consider the case of two such covariances. For this we first set up a compound optimisation problem which we transform to one of maximising two functions of the design weights simultaneously. The approaches are formulated for a general regression model and are explored through some examples including one practical problem arising in chemistry.
Keywords:Lagrangian optimality conditions  multiplicative algorithms  near uncorrelated parameter estimators  optimal design theory  vertex directional derivatives
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