More Efficient Kernel Estimation in Nonparametric Regression with Autocorrelated Errors

53 Pages Posted: 21 Jul 2008

See all articles by Raymond Carroll

Raymond Carroll

Texas A&M University - Department of Statistics

Oliver B. Linton

University of Cambridge

Enno Mammen

University of Mannheim - Department of Economics

Zhijie Xiao

University of Illinois at Urbana-Champaign - Department of Economics

Multiple version iconThere are 2 versions of this paper

Date Written: June 2002

Abstract

We propose a modification of kernel time series regression estimators that improves efficiency when the innovation process is autocorrelated. The procedure is based on a pre-whitening transformation of the dependent variable that has to be estimated from the data. We establish the asymptotic distribution of our estimator under weak dependence conditions. It is shown that the proposed estimation procedure is more efficient than the conventional kernel method. We also provide simulation evidence to suggest that gains can be achieved in moderate sized samples.

JEL Classification: C13, C14

Suggested Citation

Carroll, Raymond and Linton, Oliver B. and Mammen, Enno and Xiao, Zhijie, More Efficient Kernel Estimation in Nonparametric Regression with Autocorrelated Errors (June 2002). LSE STICERD Research Paper No. EM435, Available at SSRN: https://ssrn.com/abstract=1162610

Raymond Carroll (Contact Author)

Texas A&M University - Department of Statistics ( email )

155 Ireland Street
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HOME PAGE: http://stat.tamu.edu/people/faculty/carroll.html/

Oliver B. Linton

University of Cambridge ( email )

Faculty of Economics
Cambridge, CB3 9DD
United Kingdom

Enno Mammen

University of Mannheim - Department of Economics ( email )

Mannheim, 68131
Germany

Zhijie Xiao

University of Illinois at Urbana-Champaign - Department of Economics ( email )

410 David Kinley Hall
1407 W. Gregory
Urbana, IL 61801
United States
217-333-4520 (Phone)
217-244-6678 (Fax)

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