Here we study the problems of local asymptotic normality of the parametric family of distributions and asymptotic minimax efficient estimators when the observations are subject to right censoring. Local asymptotic normality will be established under some mild regularity conditions. A lower bound for local asymptotic minimax risk is given with respect to a bowl-shaped loss function, and furthermore a necessary and sufficient condition is given in order to achieve this lower bound. Finally, we show that this lower bound can be attained by the maximum likelihood estimator in the censored case and hence it is local asymptotic minimax efficient.Mathematics, AppliedMathematicsSCI(E)EI0ARTICLE6591-6004
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AbstractLet Xn,1 ≤ Xn,2 ≤ … ≤ Xn,n be the ordered variables corresponding to a random sample of size...
Asymptotic properties for censored data with staggered entry are studied in a parametric counting pr...
I am also organizing a session on Risk Analysis in the Biomedical and Environmental FieldInternation...
We study an estimator of the survival function under the random censoring model. Bahadur-type repres...
Here we study the problems of local asymptotic normality of the parametric family of distributions a...
The problem of the nonparametric minimax estimation of an infinitely smooth density at a given point...
The nonparametric minimax estimation of an analytic density at a given point, under random censorshi...
The nonparametric minimax estimation of an analytic density at a given point under random censorshi...
The nonparametric minimax estimation of an analytic density at a given point, under random censorshi...
Efficient estimator, local minimax risk, Kaplan-Meier estimator, kernel, random censorship,
AbstractWe give two local asymptotic minimax bounds for models which admit a local quadratic approxi...
Abstract: The minimax global asymptotic rate of convergence for the estimation of a hazard function ...
It is clear that the likelihood ratio statistics plays an important role in theories of asymptotical...
In many applications the observed data can be viewed as a censored high dimensional full data random...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
AbstractLet Xn,1 ≤ Xn,2 ≤ … ≤ Xn,n be the ordered variables corresponding to a random sample of size...
Asymptotic properties for censored data with staggered entry are studied in a parametric counting pr...
I am also organizing a session on Risk Analysis in the Biomedical and Environmental FieldInternation...
We study an estimator of the survival function under the random censoring model. Bahadur-type repres...