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Title: Characterization of the multivariate Gauss-Markoff model with singular covariance matrix and missing values (English)
Author: Oktaba, Wiktor
Language: English
Journal: Applications of Mathematics
ISSN: 0862-7940 (print)
ISSN: 1572-9109 (online)
Volume: 43
Issue: 2
Year: 1998
Pages: 119-131
Summary lang: English
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Category: math
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Summary: The aim of this paper is to characterize the Multivariate Gauss-Markoff model $(MGM)$ as in () with singular covariance matrix and missing values. $MGMDP2$ model and completed $MGMDP2Q$ model are obtained by three transformations $D$, $P$ and $Q$ (cf. ()) of $MGM$. The unified theory of estimation (Rao, 1973) which is of interest with respect to $MGM$ has been used. The characterization is reached by estimation of parameters: scalar $\sigma ^{2}$ and linear combination $\lambda ^{\prime }\bar{B}$ ( $\bar{B}=vecB)$ as in (), (), () as well as by the model of the form () (cf. Th. ). Moreover, testing linear hypothesis in the available model $MGMDP2$ by test function $F$ as in () and () is considered. It is known (Oktaba 1992) that ten quantities in models $MGMDP2$ and $MGMDP2Q $ are identical (invariant). They permit to say that formulas for estimation and testing in both models are identical (Oktaba et al., 1988, Baksalary and Kala, 1981, Drygas, 1983). An algorithm and the $UMGMBO$ program for calculations concerning estimation and testing in $MGM$ have been presented by Oktaba and Osypiuk (1993). (English)
Keyword: multivariate Gauss-Markoff model
Keyword: missing value
Keyword: developed model
Keyword: available model
Keyword: completed model
Keyword: elementary transformation
Keyword: BLUE
Keyword: estimation
Keyword: testing
Keyword: consistency
Keyword: invariant
MSC: 62H05
MSC: 62J05
idZBL: Zbl 0937.62067
idMR: MR1609162
DOI: 10.1023/A:1023215001376
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Date available: 2009-09-22T17:57:17Z
Last updated: 2020-07-02
Stable URL: http://hdl.handle.net/10338.dmlcz/134380
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