Uniformly valid post-regularization confidence regions for many functional parameters in z-estimation framework

Citation
Alexandre Belloni et al., Uniformly valid post-regularization confidence regions for many functional parameters in z-estimation framework, Annals of statistics , 46(6B), 2018, pp. 3643-3675
Journal title
ISSN journal
00905364
Volume
46
Issue
6B
Year of publication
2018
Pages
3643 - 3675
Database
ACNP
SICI code
Abstract
In this paper, we develop procedures to construct simultaneous confidence bands for p~ potentially infinite-dimensional parameters after model selection for general moment condition models where p~ is potentially much larger than the sample size of available data, n. This allows us to cover settings with functional response data where each of the p~ parameters is a function. The procedure is based on the construction of score functions that satisfy Neyman orthogonality condition approximately. The proposed simultaneous confidence bands rely on uniform central limit theorems for high-dimensional vectors (and not on Donsker arguments as we allow for p~.n). To construct the bands, we employ a multiplier bootstrap procedure which is computationally efficient as it only involves resampling the estimated score functions (and does not require resolving the high-dimensional optimization problems). We formally apply the general theory to inference on regression coefficient process in the distribution regression model with a logistic link, where two implementations are analyzed in detail. Simulations and an application to real data are provided to help illustrate the applicability of the results.