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Vol:
34
Page:
289
Authors:
Jacek Wawrzosek
Title:
Some relations between the linear model, restrictions of parameters and a linear statistical hypothesis
Language:
Polish
Keywords:
general linear Gauss-Markov model
restrictions of parameters
testability of a linear hypothesis
consistency of model
hypothesis is consistent
Summary:
Consider the general linear Gauss-Markov onevariate model M = {y, Xβ, σ
2
V}, restrictions R : l = Fβ in model and linear hypotheses H
0
: k = Hβ, H1: k ≠ Hβ. y is a nx1 observable random vector with expectation E(y) = Xβ and dispersion matrix D(y) = σ
2
V, where an nxp matrix X and an nxn nonnegative definite matrix V are known.
Necessary consistency conditions for triplets (M, R, H
0
) and (M, R, H
1
), for models (M, R) and (M, H
0
) and for the single M, for the single R and for the single H
0
are given.
Linear estimability Hβ and testability H
0
in the linear model (M, R) are presented. Moreover, we discuss conditions for nontriviality of H
0
.
Nine conditions for correctly statistical analysis in the triplet (M, R, H
0
) are collected. This is the generalization of Drwięga (1979), Nordström (1985), Kłaczyński and Pordzik (1990), Rao (1982), Seely (1977) and Wawrzosek (1994) results. This conditions become simpler when M is the Zyskind-Martin model, i.e. when R(X) ⊂ R(V) and in particular cares when the matrix V is non-singular or when F = 0. Theoretical considerations are illustrated with a numerical example.