A Small-Sample Estimator for the Sample-Selection Model
Authors:
Amos Golan a;
Enrico Moretti b;
Jeffrey M.Perloff c
| Affiliations: | a Department of Economics, American University, Washington, D.C., USA |
| b Department of Economics, UCLA, Los Angeles, California, USA | |
| c Department of Agricultural & Resource Economics, University of California, Berkeley, California, USA |
DOI:
10.1081/ETC-120028837
Publication Frequency:
6 issues per year
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Abstract
A semiparametric estimator for evaluating the parameters of data generated under a sample selection process is developed. This estimator is based on the generalized maximum entropy estimator and performs well for small and ill-posed samples. Theoretical and sampling comparisons with parametric and semiparametric estimators are given. This method and standard ones are applied to three small-sample empirical applications of the wage-participation model for female teenage heads of households, immigrants, and Native Americans.
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| Keywords: Maximum entropy; Sample selection; Monte Carlo experiments |
| view references (33) : view citations |

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