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On the natural restrictions in the singular Gauss–Markov model

Year of publication:
2008
Authors: Tian, Yongge ; Beisiegel, M. ; Dagenais, E. ; Haines, C.
Published in:
Statistical Papers. - Springer. - Vol. 49.2008, 3, p. 553-564
Publisher: Springer
Subject: Gauss–Markov model | Estimability of parametric functions | Unbiasedness of linear estimator | Natural restriction | Explicit restriction | Matrix rank method | OLSE | BLUE
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Type of publication: Article
Source:
RePEc - Research Papers in Economics
Persistent link: https://www.econbiz.de/10008533920
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