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Estimation of Missing Observations in the Generalized Linear Regression Model by Means of Dummy Variables
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1979 142-164 ESTIMATION OF MISSING OBSERVATIONS IN THE GENERALIZED 22-23.pdf
Date
1979
Author
Erlat, Halûk
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Given the multiple linear regression model with a nonscalar disturbance covariance matrix, missing observations pertaining to the dependent variable are shown to be estimated by Generalized Least Squares with dummy variables added to the explanatory variables set for each missing observation. This result is applied to heteroscedasticity, autocorrelation and to the generation of quarterly or monthly observations for stock variables.
URI
https://hdl.handle.net/11511/112632
Journal
ODTÜ Gelişme Dergisi
Collections
Department of Economics, Article
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H. Erlat, “Estimation of Missing Observations in the Generalized Linear Regression Model by Means of Dummy Variables,”
ODTÜ Gelişme Dergisi
, vol. 6, no. 22-23 kış, pp. 142–164, 1979, Accessed: 00, 2024. [Online]. Available: https://hdl.handle.net/11511/112632.