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Resumen de Nonparametric density estimation in presence of bias and censoring

Elodie Brunel, Fabienne Comte, Agathe Guilloux

  • We consider projection estimator methods for the nonparametric estimation of the density of i.i.d. biased observations with a general known bias function w and under right censoring. Adaptive procedures to catch the optimal estimator among a collection by contrast penalization are investigated and proved to give efficient estimators with optimal nonparametric rates of convergence. Monte-Carlo experiments complete the study and illustrate the method.


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