Regression Quantiles for Time Series

Authors
Citation
Cai, Zongwu, Regression Quantiles for Time Series, Econometric theory (Online) , 18(1), 2002, pp. 169-192
ISSN journal
14694360
Volume
18
Issue
1
Year of publication
2002
Pages
169 - 192
Database
ACNP
SICI code
Abstract
In this paper we study nonparametric estimation of regression quantiles for time series data by inverting a weighted Nadaraya-Watson (WNW) estimator of conditional distribution function, which was first used by Hall, Wolff, and Yao (1999 "Journal of the American Statistical Association" 94, 154-163). First, under some regularity conditions, we establish the asymptotic normality and weak consistency of the WNW conditional distribution estimator for .-mixing time series at both boundary and interior points, and we show that the WNW conditional distribution estimator not only preserves the bias, variance, and, more important, automatic good boundary behavior properties of local linear "double-kernel" estimators introduced by Yu and Jones (1998, "Journal of the American Statistical Association" 93, 228-237), but also has the additional advantage of always being a distribution itself. Second, it is shown that under some regularity conditions, the WNW conditional quantile estimator is weakly consistent and normally distributed and that it inherits all good properties from the WNW conditional distribution estimator. A small simulation study is carried out to illustrate the performance of the estimates, and a real example is also used to demonstrate the methodology.