Identification and nonparametric estimation of a transformed additively separable model
Let r (x, z) be a function that, along with its derivatives, can be consistently estimated nonparametrically. This paper discusses identification and consistent estimation of the unknown functions H, M, G and F, where r (x, z) = H [M (x, z)] and M (x, z) = G(x) + F (z). An estimation algorithm is proposed for each of the model’s unknown components when r (x, z) represents a conditional mean function. The resulting estimators use marginal integration, and are shown to have a limiting Normal distribution with a faster rate of convergence than unrestricted nonparametric alternatives. Their small sample performance is studied in a Monte Carlo experiment. We empirically apply our results to nonparametrically estimate and test generalized homothetic production functions in four industries within the Chinese economy.
| Item Type | Working paper |
|---|---|
| Keywords | Partly separable models; Nonparametric regression; Dimension reduction; Generalized homothetic function; Production function. |
| Departments |
Financial Markets Group Economics STICERD |
| Date Deposited | 21 Apr 2008 10:36 |
| URI | https://researchonline.lse.ac.uk/id/eprint/4416 |