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Semiparametric estimation of the link function in binary-choice single-index models
Authors:Alan P. Ker  Abdoul G. Sam
Affiliation:1.Institute for the Advanced Study of Food and Agricultural Policy,Department of Food, Agricultural and Resource Economics, University of Guelph,Guelph,Canada;2.Department of Agricultural, Environmental and Development Economics,The Ohio State University,Columbus,USA
Abstract:We propose a new, easy to implement, semiparametric estimator for binary-choice single-index models which uses parametric information in the form of a known link (probability) function and nonparametrically corrects it. Asymptotic properties are derived and the finite sample performance of the proposed estimator is compared to those of the parametric probit and semiparametric single-index model estimators of Ichimura (J Econ 58:71–120, 1993) and Klein and Spady (Econometrica 61:387–421, 1993). Results indicate that if the parametric start is correct, the proposed estimator achieves significant bias reduction and efficiency gains compared to Ichimura (1993) and Klein and Spady (1993). Interestingly, the proposed estimator still achieves significant bias reduction and efficiency gains even if the parametric start is not correct.
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