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Semiparametric inference for the recurrent events process by means of a single-index model

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Abstract

In this paper, we introduce new parametric and semiparametric regression techniques for a recurrent event process subject to random right censoring. We develop models for the cumulative mean function and provide asymptotically normal estimators. Our semiparametric model which relies on a single-index assumption can be seen as a dimension reduction technique that, contrary to a fully nonparametric approach, is not stroke by the curse of dimensionality when the number of covariates is high. We discuss data-driven techniques to choose the parameters involved in the estimation procedures and provide a simulation study to support our theoretical results.

Original languageEnglish
Pages (from-to)361-385
Number of pages25
JournalStatistics
Volume49
Issue number2
DOIs
Publication statusPublished - 4 Mar 2015

Keywords

  • asymptotic normality
  • dimension reduction
  • empirical processes
  • recurrent events
  • right-censoring
  • single-index model

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