Title of article :
A smooth nonparametric conditional quantile frontier estimator
Author/Authors :
Martins-Filho، نويسنده , , Carlos and Yao، نويسنده , , Feng، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2008
Abstract :
Traditional estimators for nonparametric frontier models (DEA, FDH) are very sensitive to extreme values/outliers. Recently, Aragon et al. [2005. Nonparametric frontier estimation: a conditional quantile-based approach. Econometric Theory 21, 358–389] proposed a nonparametric α -frontier model and estimator based on a suitably defined conditional quantile which is more robust to extreme values/outliers. Their estimator is based on a nonsmooth empirical conditional distribution. In this paper, we propose a new smooth nonparametric conditional quantile estimator for the α -frontier model. Our estimator is a kernel based conditional quantile estimator that builds on early work of Azzalini [1981. A note on the estimation of a distribution function and quantiles by a kernel method. Biometrika 68, 326–328]. It is computationally simple, resistant to outliers and extreme values, and smooth. In addition, the estimator is shown to be consistent and n asymptotically normal under mild regularity conditions. We also show that our estimatorʹs variance is smaller than that of the estimator proposed by Aragon et al. A simulation study confirms the asymptotic theory predictions and contrasts our estimator with that of Aragon et al.
Keywords :
Conditional quantile estimation , Production Function , Nonparametric frontier
Journal title :
Journal of Econometrics
Journal title :
Journal of Econometrics