EFFECTS OF MULTICOLLINEARITY IN SIMULTANEOUS EQUATION MODELS AND COMPARISONS OF ALTERNATIVE ESTIMATORS

Authors

  • FULYA GEZER
  • H.ALTAN ÇABUK
  • HÜSEYİN GÜLER

DOI:

https://doi.org/10.15659/3.sektor-sosyal-ekonomi.24.03.2351

Keywords:

Simultaneous equation model, multicollinearity, three-stage least squares, ridge, generalized maximum entropy.

Abstract

The aim of this study is to determine the most efficient estimator for simultaneous equation models with multicollinearity problem by comparing the performance of alternative estimators that overcome the effect of multicollinearity and produce more stable estimates. For this purpose, Klein’s simultaneous equation model with multicollinearity problem presented in his study titled “Economic Fluctuations in the United States” in 1950 is used. The model is estimated with traditional estimators two-stage least squares, three-stage least squares and biased estimators ridge, generalized maximum entropy (GME). The performances of these estimators are compared according to the mean square error criteria obtained by the bootstrap method. As a result, GME is found to be the most efficient estimator in the presence of multicollinearity.

Published

25.03.2024

How to Cite

FULYA GEZER, H.ALTAN ÇABUK, & HÜSEYİN GÜLER. (2024). EFFECTS OF MULTICOLLINEARITY IN SIMULTANEOUS EQUATION MODELS AND COMPARISONS OF ALTERNATIVE ESTIMATORS. Third Sector Social Economic Review, 59(1), 574–595. https://doi.org/10.15659/3.sektor-sosyal-ekonomi.24.03.2351

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