NONPARAMETRIC GENERALIZED LEAST SQUARES IN APPLIED REGRESSION ANALYSIS

作者:O'Hara Michael; Parmeter Christopher F*
来源:Pacific Economic Review, 2013, 18(4): 456-474.
DOI:10.1111/1468-0106.12038

摘要

This paper compares a nonparametric generalized least squares (NPGLS) estimator to parametric feasible GLS (FGLS) and variants of heteroscedasticity robust standard error estimators (HRSE) in an applied setting. NPGLS consistently estimates the unknown scedastic function and produces more efficient parameter estimates than HRSE. We apply these various approaches for handling heteroscedasticity to data on professor rankings obtained from RateMyProfessors.com. We find that the statistical significance of key variables differs across seven versions of HRSE, leading to different conclusions, and a standard parametric approach to FGLS suffers from misspecification. NPGLS combines the virtues of both of these parametric approaches.

  • 出版日期2013-10

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