English

Iterative Isotonic Regression

Statistics Theory 2016-08-11 v1 Statistics Theory

Abstract

This article introduces a new nonparametric method for estimating a univariate regression function of bounded variation. The method exploits the Jordan decomposition which states that a function of bounded variation can be decomposed as the sum of a non-decreasing function and a non-increasing function. This suggests combining the backfitting algorithm for estimating additive functions with isotonic regression for estimating monotone functions. The resulting iterative algorithm is called Iterative Isotonic Regression (I.I.R.). The main technical result in this paper is the consistency of the proposed estimator when the number of iterations knk_n grows appropriately with the sample size nn. The proof requires two auxiliary results that are of interest in and by themselves: firstly, we generalize the well-known consistency property of isotonic regression to the framework of a non-monotone regression function, and secondly, we relate the backfitting algorithm to Von Neumann's algorithm in convex analysis.

Keywords

Cite

@article{arxiv.1303.4288,
  title  = {Iterative Isotonic Regression},
  author = {Arnaud Guyader and Nick Hengartner and Nicolas Jégou and Eric Matzner-Løber},
  journal= {arXiv preprint arXiv:1303.4288},
  year   = {2016}
}
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