Robust estimation using the Huber function with a data-dependent tuning constant


Autoria(s): Wang, Y-G.; Lin, X.; Zhu, M.; Bai, Z. D.
Data(s)

2007

Resumo

Robust estimation often relies on a dispersion function that is more slowly varying at large values than the square function. However, the choice of tuning constant in dispersion functions may impact the estimation efficiency to a great extent. For a given family of dispersion functions such as the Huber family, we suggest obtaining the "best" tuning constant from the data so that the asymptotic efficiency is maximized. This data-driven approach can automatically adjust the value of the tuning constant to provide the necessary resistance against outliers. Simulation studies show that substantial efficiency can be gained by this data-dependent approach compared with the traditional approach in which the tuning constant is fixed. We briefly illustrate the proposed method using two datasets.

Identificador

http://eprints.qut.edu.au/90494/

Publicador

Taylor & Francis Inc

Relação

DOI:10.1198/106186007x180156

Wang, Y-G., Lin, X., Zhu, M., & Bai, Z. D. (2007) Robust estimation using the Huber function with a data-dependent tuning constant. Journal of Computational and Graphical Statistics, 16(2), pp. 468-481.

Direitos

Copyright 2007 American Statistical Association, Institute of Mathematical Statisticsand Interface Foundation of North America

Palavras-Chave #asymptotic efficiency #M-estimation #robust estimation #regression #criterion #location #squares
Tipo

Journal Article