The Bootstrap and the Edgeworth Correction for Semiparametric Averaged Derivatives

49 Pages Posted: 21 Jul 2008

See all articles by Yoshihiko Nishiyama

Yoshihiko Nishiyama

Kyoto University - Institute of Economic Research

Date Written: January 2005

Abstract

In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the parametric component which are asymptotically normal and converge at parametric rate. However, smoothing can inflate the error in the normal approximation, so that refined approximations are of interest, especially in sample sizes that are not enormous. We show that a bootstrap distribution achieves a valid Edgeworth correction in case of density-weighted averaged derivative estimates of semiparametric index models. Approaches to bias-reduction are discussed. We also develop a higher order expansion, to show that the bootstrap achieves a further reduction in size distortion in case of two-sided testing. The finite sample performance of the methods is investigated by means of Monte Carlo simulations from a Tobit model.

JEL Classification: C14, C24

Suggested Citation

Nishiyama, Yoshihiko, The Bootstrap and the Edgeworth Correction for Semiparametric Averaged Derivatives (January 2005). LSE STICERD Research Paper No. EM483, Available at SSRN: https://ssrn.com/abstract=1162635

Yoshihiko Nishiyama (Contact Author)

Kyoto University - Institute of Economic Research ( email )

Yoshida-Honmachi
Sakyo-ku
Kyoto 606-8501
Japan