OPERATIONAL TIME AND IN-SAMPLE DENSITY FORECASTING

Citation
Young K. Lee et al., OPERATIONAL TIME AND IN-SAMPLE DENSITY FORECASTING, Annals of statistics , 45(3), 2017, pp. 1312-1341
Journal title
ISSN journal
00905364
Volume
45
Issue
3
Year of publication
2017
Pages
1312 - 1341
Database
ACNP
SICI code
Abstract
In this paper, we consider a new structural model for in-sample density forecasting. In-sample density forecasting is to estimate a structured density on a region where data are observed and then reuse the estimated structured density on some region where data are not observed. Our structural assumption is that the density is a product of one-dimensional functions with one function sitting on the scale of a transformed space of observations. The transformation involves another unknown one-dimensional function, so that our model is formulated via a known smooth function of three underlying unknown one-dimensional functions. We present an innovative way of estimating the one-dimensional functions and show that all the estimators of the three components achieve the optimal one-dimensional rate of convergence. We illustrate how one can use our approach by analyzing a real dataset, and also verify the tractable finite sample performance of the method via a simulation study.