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Mariusz Grządziel 《Statistical Papers》2008,49(3):399-419
Gnot et al. (J Statist Plann Inference 30(1):223–236, 1992) have presented the formulae for computing Bayes invariant quadratic
estimators of variance components in normal mixed linear models of the form
where the matrices V
i
, 1 ≤ i ≤ k − 1, are symmetric and nonnegative definite and V
k
is an identity matrix. These formulae involve a basis of a quadratic subspace containing MV
1
M,...,MV
k-1
M,M, where M is an orthogonal projector on the null space of X′. In the paper we discuss methods of construction of such a basis. We survey Malley’s algorithms for finding the smallest
quadratic subspace including a given set of symmetric matrices of the same order and propose some modifications of these algorithms.
We also consider a class of matrices sharing some of the symmetries common to MV
1
M,...,MV
k-1
M,M. We show that the matrices from this class constitute a quadratic subspace and describe its explicit basis, which can be
directly used for computing Bayes invariant quadratic estimators of variance components. This basis can be also used for improving
the efficiency of Malley’s algorithms when applied to finding a basis of the smallest quadratic subspace containing the matrices
MV
1
M,...,MV
k-1
M,M. Finally, we present the results of a numerical experiment which confirm the potential usefulness of the proposed methods.
Dedicated to the memory of Professor Stanisław Gnot. 相似文献