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ON THE EMPIRICAL MEAN LIFE PROCESSES FOR RIGHT CENSORED DATA  

Park, Hyo-Il (Department of Statistics, Chongju University)
Publication Information
Journal of the Korean Statistical Society / v.32, no.1, 2003 , pp. 25-32 More about this Journal
Abstract
In this paper, we define the mean life process for the right censored data and show the asymptotic equivalence between two kinds of the mean life processes. We use the Kaplan-Meier and Susarla-Van Ryzin estimates as the estimates of survival function for the construction of the mean life processes. Also we show the asymptotic equivalence between two mean residual life processes as an application and finally discuss some difficulties caused by the censoring mechanism.
Keywords
Empirical mean life process; empirical mean residual life process; Kaplan Meier estimate; right censored data; survival function; Susarla-Van Ryzin estimate;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 large sample theory for an estimator of the mean survival time from censored samples /
[ Susarla, V.;Van Ryzin, j. ] / The Annals of Statistics   ScienceOn
2 nonparametric estimation of mean residual life function under random censorship /
[ Park, B. G.;Sohn, J. K.;Lee, S. B. ] / Journal of the Korean Statistical Society   과학기술학회마을
3 nonparametric Bayesian estimation of survival curves from incomplete observations /
[ Susarla, V.;Van Ryzin, J. ] / Journal of the American Statistical Association   ScienceOn
4 Estimation of a biometric function /
[ Yang, G. L. ] / The Annals of Statistics   ScienceOn
5 Mean residual life /
[ Hall, W. J;Wellner, J. A.;M. Csorgo(ed);D. A. Dawson(ed);J. N. K. Rao(ed);A. K. Md(ed);E. Saleh(ed) ] / In Statistics and Related Topics
6 Large sample behaviour of the product-limit estimator on the whole line /
[ Gill, R. D. ] / The Annals of Statistics   ScienceOn
7 A note on an estimator of life expectancey with random censorship /
[ Kumazawa, Y. ] / Biometrika   ScienceOn
8 /
[ Shorack, G. R.;Wellner, J. A. ] / Empirical Processes with Applications to Statistics