An asymptotic minimax risk bound for estimation of a linear functional relationship |
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Authors: | M. Nussbaum |
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Affiliation: | Akademie der Wissenschaften der DDR, Berlin, German Democratic Republic |
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Abstract: | We consider estimation of the parameter B in a multivariate linear functional relationship Xi=ξi+ξ1i, Yi=Bξi+ξ2i, i=1,…,n, where the errors (ζ1i′, ζ2i′) are independent standard normal and (ξi, i ) is a sequence of unknown nonrandom vectors (incidental parameters). If there are no substantial a priori restrictions on the infinite sequence of incidental parameters then asymptotically the model is nonparametric but does not fit into common settings presupposing a parameter from a metric function space. A special result of the local asymptotic minimax type for the m.1.e. of B is proved. The accuracy of the normal approximation for the m.l.e. of order n−1/2 is also established. |
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Keywords: | Functional relationship infinitely many incidental parameters local asymptotic minimax risk bound accuracy of normal approximation |
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