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Journal of Economic Perspectives: Vol. 15 No. 4 (Fall 2001)
JEP Volume. 15, Issue 4 |
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Semiparametric Censored Regression Models
Article Citation
Chay, Kenneth Y., and
James L. Powell. 2001. "Semiparametric Censored Regression Models."
Journal of Economic Perspectives,
15(4): 29-42.
DOI: 10.1257/jep.15.4.29
DOI: 10.1257/jep.15.4.29
Abstract
When data are censored, ordinary least squares regression can provide biased coefficient estimates. Maximum likelihood approaches to this problem are valid only if the error distribution is correctly specified, which can be problematic in practice. We review several semiparametric estimators for the censored regression model that do not require parameterization of the error distribution. These estimators are used to examine changes in black-white earnings inequality during the 1960s based on censored tax records. The results show that there was significant earnings convergence among black and white men in the American South after the passage of the 1964 Civil Rights Act.
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Authors
Chay, Kenneth Y. (U CA, Berkeley)
Powell, James L. (U CA, Berkeley)
Powell, James L. (U CA, Berkeley)
JEL Classifications
C24: Single Equation Models; Single Variables: Truncated and Censored Models
J31: Wage Level and Structure; Wage Differentials
J16: Economics of Gender; Non-labor Discrimination
J31: Wage Level and Structure; Wage Differentials
J16: Economics of Gender; Non-labor Discrimination
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