TY - JOUR
T1 - Nonparametric functional central limit theorem for time series regression with application to self-normalized confidence interval
AU - Kim, Seonjin
AU - Zhao, Zhibiao
AU - Shao, Xiaofeng
N1 - Funding Information:
We are grateful to the editor and two anonymous referees for their constructive comments. Shao acknowledges partial financial support from National Science Foundation (NSF) grants DMS-0804937 and DMS-1104545 ; Zhao acknowledges partial financial support from NSF grant DMS-1309213 and NIDA grant P50-DA10075 . The content is solely the responsibility of the authors and does not necessarily represent the official views of the NIDA or the NSF.
Publisher Copyright:
© 2014 Elsevier Inc.
PY - 2015/1/1
Y1 - 2015/1/1
N2 - This paper is concerned with the inference of nonparametric mean function in a time series context. The commonly used kernel smoothing estimate is asymptotically normal and the traditional inference procedure then consistently estimates the asymptotic variance function and relies upon normal approximation. Consistent estimation of the asymptotic variance function involves another level of nonparametric smoothing. In practice, the choice of the extra bandwidth parameter can be difficult, the inference results can be sensitive to bandwidth selection and the normal approximation can be quite unsatisfactory in small samples leading to poor coverage. To alleviate the problem, we propose to extend the recently developed self-normalized approach, which is a bandwidth free inference procedure developed for parametric inference, to construct point-wise confidence interval for nonparametric mean function. To justify asymptotic validity of the self-normalized approach, we establish a functional central limit theorem for recursive nonparametric mean regression function estimates under primitive conditions and show that the limiting process is a Gaussian process with non-stationary and dependent increments. The superior finite sample performance of the new approach is demonstrated through simulation studies.
AB - This paper is concerned with the inference of nonparametric mean function in a time series context. The commonly used kernel smoothing estimate is asymptotically normal and the traditional inference procedure then consistently estimates the asymptotic variance function and relies upon normal approximation. Consistent estimation of the asymptotic variance function involves another level of nonparametric smoothing. In practice, the choice of the extra bandwidth parameter can be difficult, the inference results can be sensitive to bandwidth selection and the normal approximation can be quite unsatisfactory in small samples leading to poor coverage. To alleviate the problem, we propose to extend the recently developed self-normalized approach, which is a bandwidth free inference procedure developed for parametric inference, to construct point-wise confidence interval for nonparametric mean function. To justify asymptotic validity of the self-normalized approach, we establish a functional central limit theorem for recursive nonparametric mean regression function estimates under primitive conditions and show that the limiting process is a Gaussian process with non-stationary and dependent increments. The superior finite sample performance of the new approach is demonstrated through simulation studies.
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U2 - 10.1016/j.jmva.2014.09.017
DO - 10.1016/j.jmva.2014.09.017
M3 - Article
C2 - 25386031
AN - SCOPUS:84908632095
SN - 0047-259X
VL - 133
SP - 277
EP - 290
JO - Journal of Multivariate Analysis
JF - Journal of Multivariate Analysis
ER -