Opuscula Mathematica (Nov 2022)

Strong consistency of the local linear relative regression estimator for censored data

  • Feriel Bouhadjera,
  • Elias Ould Saïd

DOI
https://doi.org/10.7494/OpMath.2022.42.6.805
Journal volume & issue
Vol. 42, no. 6
pp. 805 – 832

Abstract

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In this paper, we combine the local linear approach to the relative error regression estimation method to build a new estimator of the regression operator when the response variable is subject to random right censoring. We establish the uniform almost sure consistency with rate over a compact set of the proposed estimator. Numerical studies, firstly on simulated data, then on a real data set concerning the death times of kidney transplant patients, were conducted. These practical studies clearly show the superiority of the new estimator compared to competitive estimators.

Keywords