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A CONSISTENCY RESULT IN GENERAL CENSORING MODELS 

Authors: Sebastian Doumlhler a; Ludger Ruumlschendorf a
Affiliation:   a University of Freiburg Institute for Mathematical Stochastics Eckerstr. 1 Freiburg Germany D-79104.
DOI: 10.1080/0233188031000124536
Publication Frequency: 6 issues per year
Published in: journal Statistics, Volume 37, Issue 3 May 2003 , pages 205 - 216
Formats available: PDF (English)
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Abstract

In this paper we prove a consistency result for sieved maximum likelihood estimators of the density in general random censoring models with covariates. The proof is based on the method of functional estimation. The estimation error is decomposed in a deterministic approximation error and the stochastic estimation error. The main part of the proof is to establish a uniform law of large numbers for the conditional log-likelihood functional, by using results and techniques from empirical process theory.
Keywords: Censoring Model; Sieved Maximum Likelihood Estimator; Functional Estimation; Empirical Process Theory
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