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Published September 1981 | public
Journal Article

Estimation of dynamic models with error components

Abstract

Observations on N cross-section units at T time points are used to estimate a simple statistical model involving an autoregressive process with an additive term specific to the unit. Different assumptions about the initial conditions are (a) initial state fixed, (b) initial state random, (c) the unobserved individual effect independent of the unobserved dynamic process with the initial value fixed, and (d) the unobserved individual effect independent of the unobserved dynamic process with initial value random. Asymptotic properties of the maximum likelihood and "covariance" estimators are obtained when T → ∞ and when N → ∞. The relationship between the pseudo and conditional maximum likelihood estimators is clarified. A simple consistent estimator that is independent of the initial conditions and the way in which T or N → ∞ is also suggested.

Additional Information

© 1981 American Statistical Association. Received February 1980; revised February 1981. This work was supported by National Science Foundation Grants SES79-13976 and SES80-07576 at the Institute for Mathematical Studies in the Social Sciences, Stanford University, and by Social Sciences and Humanities Research Council of Canada Grant 410-80-0080 at the Institute for Policy Analysis, University of Toronto. This technical report was completed while the first author was a Sherman Fairchild Distinguished Scholar at the California Institute of Technology and the second author was a visiting associate professor of economics at Princeton University. The authors are indebted to the referees for helpful comments and James Powell for assistance in preparing this paper. Formerly SSWP 336.

Additional details

Created:
August 22, 2023
Modified:
October 23, 2023