Three-Stage Least Squares
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A Three-Stage Least Squares is a multivariate regression algorithm that can be used for estimating simultaneous equations.
- AKA: 3SLS.
- …
- Counter-Example(s):
- See: Multivariate Regression Algorithm, Estimator, Simultaneous Equations Set.
References
2015
- (Wikipedia, 2015) ⇒ https://www.wikiwand.com/en/Simultaneous_equations_model Retrieved 2016-07-03
- The three-stage least squares estimator was introduced by Zellner & Theil (1962). It combines two-stage least squares (2SLS) with seemingly unrelated regressions (SUR).
1962
- (Zellner andTheil 1962) ⇒ Zellner, A., & Theil, H. (1962). “Three-stage least squares: simultaneous estimation of simultaneous equations". Econometrica: Journal of the Econometric Society, 54-78. http://www.jstor.org/stable/1911287
- IN SIMPLE though approximate terms, the two-stage least squares method of estimating a structural equation consists of two steps, the first of which serves to estimate the moment matrix of the reduced-form disturbances and the second to estimate the coefficients of one single structural equation after its jointly dependent variables are "purified" by means of the moment matrix just mentioned. The three-stage least squares method, which is developed in this paper, goes one step further by using the two-stage least squares estimated moment matrix of the structural disturbances to estimate all coefficients of the entire system simultaneously. The method has full-information characteristics to the extent that, if the moment matrix of the structural disturbances is not diagonal (that is, if the structural disturbances have nonzero "contemporaneous" covariances), the estimation of the coeffiecients of any identifiable equation gains in efficiency as soon as there are other equations that are over-identified. Further, the method can take account of restrictions on parameters in different structural equations. And it is very simple computationally, apart from the inversion of one big matrix.