Bayesian Approaches to Nonparametric Estimation of Densities on the Unit Interval

Citation
Li, Song et al., Bayesian Approaches to Nonparametric Estimation of Densities on the Unit Interval, Econometric reviews , 34(3), 2015, pp. 394-412
Journal title
ISSN journal
07474938
Volume
34
Issue
3
Year of publication
2015
Pages
394 - 412
Database
ACNP
SICI code
Abstract
This paper investigates nonparametric estimation of density on [0, 1]. The kernel estimator of density on [0, 1] has been found to be sensitive to both bandwidth and kernel. This paper proposes a unified Bayesian framework for choosing both the bandwidth and kernel function. In a simulation study, the Bayesian bandwidth estimator performed better than others, and kernel estimators were sensitive to the choice of the kernel and the shapes of the population densities on [0, 1]. The simulation and empirical results demonstrate that the methods proposed in this paper can improve the way the probability densities on [0, 1] are presently estimated.