A martingale approach to the copula-graphic estimator for the survival function under dependent censoring

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Abstract

The product limit estimator is arguably the most popular method of estimating survival probabilities in homogeneous samples. When the survival time and the censoring time are dependent, the product-limit estimator is an inconsistent estimator of the marginal survival function. Recently M. Zheng and J. P. Klein (1995, Biometrika 82, 127-138) proposed a copula-graphic estimator that models the dependency between censoring and survival using a copula function. This work investigates their proposal. First it derives a closed form expression for the copulagraphic estimator when the joint survival function is modeled with an Archimedean copula. The copula-graphic estimator is then shown to be uniformly consistent and asymptotically normal. It is also equivalent to the usual product-limit estimator when the survival and censoring times are assumed to be independent. A sensitivity analysis of the specification of the copula model for the dependency is also presented. © 2001 Academic Press.

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Rivest, L. P., & Wells, M. T. (2001). A martingale approach to the copula-graphic estimator for the survival function under dependent censoring. Journal of Multivariate Analysis, 79(1), 138–155. https://doi.org/10.1006/jmva.2000.1959

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