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Journal ArticleDOI

Computing 3SLS Solutions of Simultaneous Equation Models with a Possible Singular Variance–Convariance Matrix

Erricos John Kontoghiorghes, +1 more
- 01 Aug 1997 - 
- Vol. 10, Iss: 3, pp 231-250
TLDR
Three methods have been described for solving SEMs subject to separable linear equalities constraints, considers the constraints as additional precise observations while the other two methods reparameterized the constraints to solve reduced unconstrained SEMs.
Abstract
Algorithms for computing the three-stage least squares (3SLS) estimator usually require the disturbance convariance matrix to be non-singular. However, the solution of a reformulated simultaneous equation model (SEM) results into the redundancy of this condition. Having as a basic tool the QR decomposition, the 3SLS estimator, its dispersion matrix and methods for estimating the singular disturbance covariance matrix and derived. Expressions revealing linear combinations between the observations which become redundant have also been presented. Algorithms for computing the 3SLS estimator after the SEM have been modified by deleting or adding new observations or variables are found not to be very efficient, due to the necessity of removing the endogeneity of the new data or by re-estimating the disturbance covariance matrix. Three methods have been described for solving SEMs subject to separable linear equalities constraints. The first method considers the constraints as additional precise observations while the other two methods reparameterized the constraints to solve reduced unconstrained SEMs. Method for computing the main matrix factorizations illustrate the basic principles to be adopted for solving SEMs on serial or parallel computers.

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Citations
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Journal ArticleDOI

Reflections on Partial Least Squares Path Modeling

TL;DR: A recent exchange in Organizational Research Methods between critics and proponents of partial least squares path modeling is taken stock, drawing from the broader methodological and statistical literature to offer additional thoughts concerning the utility of PLS-PM.
Journal ArticleDOI

A comparative study of algorithms for solving seemingly unrelated regressions models

TL;DR: The computational efficiency of various algorithms for solving seemingly unrelated regressions (SUR) models is investigated and strategies to exploit the structure of the matrices involved are developed.
Journal ArticleDOI

Parallel strategies for computing the orthogonal factorizations used in the estimation of econometric models

TL;DR: Parallel strategies based on compound disjoint Givens rotations are proposed for computing the main two factorizations that are used in the solution of seemingly unrelated regression and simultaneous equations models as mentioned in this paper.
Journal ArticleDOI

Parallel Strategies for Solving SURE Models with Variance Inequalities and Positivity of Correlations Constraints

TL;DR: The problem of computing estimates of parameters in SURE models withvariance inequalities and positivity of correlations constraints is considered and a compact method to solve the model with proper subsetregressors is proposed.
Journal ArticleDOI

Algorithms for Computing the QR Decomposition of a Set of Matrices with Common Columns

TL;DR: An algorithm which computes the QR decompositions by deriving the minimum spanning tree of the graph by derived theoretical measures of complexity and numerical results from the implementation of this and alternative heuristic algorithms are given.
References
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Book

Matrix computations

Gene H. Golub
Book

Solving least squares problems

TL;DR: Since the lm function provides a lot of features it is rather complicated so it is going to instead use the function lsfit as a model, which computes only the coefficient estimates and the residuals.
Book ChapterDOI

Three-Stage Least Squares: Simultaneous Estimation of Simultaneous Equations

TL;DR: The three-stage least squares (3-STMLEC) method as discussed by the authors is the first method that uses the moment matrix of the structural disturbances to estimate all coefficients of the entire system simultaneously.
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