Equivalence of maximum likelihood estimation and iterative two-stage estimation for seemingly unrelated regression models |
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Authors: | Teasung Park |
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Institution: | 1. Department of Statistics , Hankuk University of Foreign Studies , Seoul, 130-791, Korea;2. National Institutes of Health , Bldg. 6100, 7B13, Bethesda, MD, 20892, U.S.A |
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Abstract: | The seemingly unrelated regression model is viewed in the context of repeated measures analysis. Regression parameters and the variance-covariance matrix of the seemingly unrelated regression model can be estimated by using two-stage Aitken estimation. The first stage is to obtain a consistent estimator of the variance-covariance matrix. The second stage uses this matrix to obtain the generalized least squares estimators of the regression parameters. The maximum likelihood (ML) estimators of the regression parameters can be obtained by performing the two-stage estimation iteratively. The iterative two-stage estimation procedure is shown to be equivalent to the EM algorithm (Dempster, Laird, and Rubin, 1977) proposed by Jennrich and Schluchter (1986) and Laird, Lange, and Stram (1987) for repeated measures data. The equivalence of the iterative two-stage estimator and the ML estimator has been previously demonstrated empirically in a Monte Carlo study by Kmenta and Gilbert (1968). It does not appear to be widely known that the two estimators are equivalent theoretically. This paper demonstrates this equivalence. |
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Keywords: | EM algorithm Longitudinal data Missing data Repeated measures analysis |
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