Necessary and sufficient conditions for identification with linear coefficient and covariance restrictions are developed in a limited information context. For the limited information case, covariance restrictions aid identification if and only if they imply that a set of endogenous variables is predetermined in the equation of interest (generalizing the idea of recursiveness). Under full information, covariance restrictions imply that residuals from other equations are predetermined in a particular equation and, under certain conditions, can aid in identification. Sufficient conditions for identification are obtained for the hierarchical system in which the identification of a particular equation does not depend upon the identifiability of higher-numbered equations. In the general case, the FIML first order conditions show that if the system of equations is identifiable as a whole, covariance restrictions cause residuals to behave as instruments. In both limited and full information settings, the link between identification and estimation is worked out: restrictions useful for identification yield instruments required for estimation.
MLA
Hausman, Jerry A., and William E. Taylor. “Identification in Linear Simultaneous Equations Models with Covariance Restrictions: An Instrumental Variables Interpretation.” Econometrica, vol. 51, .no 5, Econometric Society, 1983, pp. 1527-1550, https://www.jstor.org/stable/1912288
Chicago
Hausman, Jerry A., and William E. Taylor. “Identification in Linear Simultaneous Equations Models with Covariance Restrictions: An Instrumental Variables Interpretation.” Econometrica, 51, .no 5, (Econometric Society: 1983), 1527-1550. https://www.jstor.org/stable/1912288
APA
Hausman, J. A., & Taylor, W. E. (1983). Identification in Linear Simultaneous Equations Models with Covariance Restrictions: An Instrumental Variables Interpretation. Econometrica, 51(5), 1527-1550. https://www.jstor.org/stable/1912288
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