An explicit formula is derived to compute the $A$-optimal design weights on linearly independent regression vectors, for the mean parameters in a linear model with homoscedastic variances. The formula emerges as a special case of a general result which holds for a wide class of optimality criteria. There are close links to iterative algorithms for computing optimal weights.
CITATION STYLE
Pukelsheim, F., & Torsney, B. (2007). Optimal Weights for Experimental Designs on Linearly Independent Support Points. The Annals of Statistics, 19(3). https://doi.org/10.1214/aos/1176348265
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