Nonparametric localized bandwidth selection for Kernel density estimation

Citation
Cheng, Tingting et al., Nonparametric localized bandwidth selection for Kernel density estimation, Econometric reviews , 38(7), 2019, pp. 733-762
Journal title
ISSN journal
07474938
Volume
38
Issue
7
Year of publication
2019
Pages
733 - 762
Database
ACNP
SICI code
Abstract
As conventional cross-validation bandwidth selection methods do not work properly in the situation where the data are serially dependent time series, alternative bandwidth selection methods are necessary. In recent years, Bayesian-based methods for global bandwidth selection have been studied. Our experience shows that a global bandwidth is however less suitable than a localized bandwidth in kernel density estimation based on serially dependent time series data. Nonetheless, a di.cult issue is how we can consistently estimate a localized bandwidth. This paper presents a nonparametric localized bandwidth estimator, for which we establish a completely new asymptotic theory. Applications of this new bandwidth estimator to the kernel density estimation of Eurodollar deposit rate and the S&P 500 daily return demonstrate the effectiveness and competitiveness of the proposed localized bandwidth.