Local polynomial regression estimation with correlated errors

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Local polynomial regression estimation with correlated errorsFecha
2001Cita bibliográfica
Communications in statistics, theory and methods, vol. 30, n. 7, pp. 1271-1293.
Resumen
In this paper, we study the nonparametric estimation of the regression
function and its derivatives using weighted local polynomial fitting. Consider
the fixed regression model and suppose that the random observation error is
coming from a strictly stationary stochastic process. Expressions for the bias
and the variance array of the estimators of the regression function and its
derivatives are obtained and joint asymptotic normality is established. The
influence of the dependence of the data is observed in the expression of the
variance. We also propose a variable bandwidth selection procedure. A simulation
study and an analysis with real economic data illustrate the proposed
selection method.
Palabras clave
Nonparametric estimators
Local polynomial fitting
Autoregressive process
Local polynomial fitting
Autoregressive process
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Derechos
This is a preprint of an article submitted for consideration in the Communications in statistics, theory and methods © 2001 copyright Taylor & Francis; Communications in statistics, theory and methods is available online at: http://www.informaworld.com/
ISSN
0361-0926