| Literature DB >> 29094111 |
David Benkeser, Mark van der Laan.
Abstract
Estimation of a regression functions is a common goal of statistical learning. We propose a novel nonparametric regression estimator that, in contrast to many existing methods, does not rely on local smoothness assumptions nor is it constructed using local smoothing techniques. Instead, our estimator respects global smoothness constraints by virtue of falling in a class of right-hand continuous functions with left-hand limits that have variation norm bounded by a constant. Using empirical process theory, we establish a fast minimal rate of convergence of our proposed estimator and illustrate how such an estimator can be constructed using standard software. In simulations, we show that the finite-sample performance of our estimator is competitive with other popular machine learning techniques across a variety of data generating mechanisms. We also illustrate competitive performance in real data examples using several publicly available data sets.Entities:
Year: 2016 PMID: 29094111 PMCID: PMC5662030 DOI: 10.1109/DSAA.2016.93
Source DB: PubMed Journal: Proc Int Conf Data Sci Adv Anal