An Adaptation Theory for Nonparametric Confidence Intervals

Loading...
Thumbnail Image
Penn collection
Statistics Papers
Degree type
Discipline
Subject
adaptation
between class modulus
confidence intervals
coverage
expected length
linear functionals
minimax estimation
modulus of continuity
white noise model
Statistics and Probability
Funder
Grant number
License
Copyright date
Distributor
Related resources
Author
Cai, T. Tony
Low, Mark G
Contributor
Abstract

A nonparametric adaptation theory is developed for the construction of confidence intervals for linear functionals. A between class modulus of continuity captures the expected length of adaptive confidence intervals. Sharp lower bounds are given for the expected length and an ordered modulus of continuity is used to construct adaptive confidence procedures which are within a constant factor of the lower bounds. In addition, minimax theory over nonconvex parameter spaces is developed.

Advisor
Date Range for Data Collection (Start Date)
Date Range for Data Collection (End Date)
Digital Object Identifier
Series name and number
Publication date
2004-01-01
Journal title
The Annals of Statistics
Volume number
Issue number
Publisher
Publisher DOI
Journal Issue
Comments
Recommended citation
Collection