Improving Point and Interval Estimates of Monotone Functions by Rearrangement
Abstract
Suppose that a target function is monotonic, namely, weakly increasing, and an available original estimate of this target function is not weakly increasing. Rearrangements, univariate and multivariate, transform the original estimate to a monotonic estimate that always lies closer in common metrics to the target function. Furthermore, suppose an original simultaneous confidence interval, which covers the target function with probability at least , is defined by an upper and lower end-point functions that are not weakly increasing. Then the rearranged confidence interval, defined by the rearranged upper and lower end-point functions, is shorter in length in common norms than the original interval and also covers the target function with probability at least . We demonstrate the utility of the improved point and interval estimates with an age-height growth chart example.
Cite
@article{arxiv.0806.4730,
title = {Improving Point and Interval Estimates of Monotone Functions by Rearrangement},
author = {Victor Chernozhukov and Ivan Fernandez-Val and Alfred Galichon},
journal= {arXiv preprint arXiv:0806.4730},
year = {2018}
}
Comments
24 pages, 4 figures, 3 tables