We study an estimator of the survival function under the random censoring model. Bahadur-type representation of the estimator is obtained and asymptotic expression for its mean squared errors is given, which leads to the consistency and asymptotic normality of the estimator. A data-driven local bandwidth selection rule for the estimator is proposed. It is worth noting that the estimator is consistent at left boundary points, which contrasts with the cases of density and hazard rate estimation. A Monte Carlo comparison of different estimators is made and it appears that the proposed data-driven estimators have certain advantages over the common Kaplan-Meier estmator.Mathematics, AppliedMathematicsSCI(E)1ARTICLE4503-5114
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Assuming that X1, ..., Xn is a random sample of lifetimes from a distribution with density [latin sm...
A model for competing (resp. complementary) risks survival data where the failure time can be left (...
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In this article we consider the problem of estimating the survival and mean residual life functions ...
AbstractWe propose a random censorship model which permits uncertainty in the cause of death assessm...
The aim of paper is considering the problem of estimation of conditional survival function in the ca...
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A class of unbiased estimators of survival probability P (Ti> t) under random and independent cen...
AbstractA strong i.i.d. representation is obtained for the product-limit estimator of the survival f...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
AbstractThis paper deals with estimation of life expectancy used in survival analysis and competing ...
We suggest a completely empirical approach to the construction of confidence bands for hazard functi...
In this paper, based on random left truncated and right censored data, the authors derive strong rep...
Assuming that X1, ..., Xn is a random sample of lifetimes from a distribution with density [latin sm...
A model for competing (resp. complementary) risks survival data where the failure time can be left (...