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Non-parametric Copula Estimation Under Bivariate Censoring

  • Sorbonne Université

Research output: Contribution to journalArticlepeer-review

Abstract

In this paper, we consider non-parametric copula inference under bivariate censoring. Based on an estimator of the joint cumulative distribution function, we define a discrete and two smooth estimators of the copula. The construction that we propose is valid for a large range of estimators of the distribution function and therefore for a large range of bivariate censoring frameworks. Under some conditions on the tails of the distributions, the weak convergence of the corresponding copula processes is obtained in l([0,1]2). We derive the uniform convergence rates of the copula density estimators deduced from our smooth copula estimators. Investigation of the practical behaviour of these estimators is performed through a simulation study and two real data applications, corresponding to different censoring settings. We use our non-parametric estimators to define a goodness-of-fit procedure for parametric copula models. A new bootstrap scheme is proposed to compute the critical values.

Original languageEnglish
Pages (from-to)925-946
Number of pages22
JournalScandinavian Journal of Statistics
Volume42
Issue number4
DOIs
Publication statusPublished - 1 Dec 2015

Keywords

  • Bivariate censoring
  • Bootstrap
  • Copula density
  • Copula function
  • Goodness-of-fit
  • Kaplan-Meier estimator
  • Non-parametric estimation
  • Survival analysis

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