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Asymptotics for non-parametric likelihood estimation with doubly censored multivariate failure times
Authors:Dianliang Deng  Hong-Bin Fang
Institution:aDepartment of Mathematics and Statistics, University of Regina, SK., S4S 0A2, Canada;bDivision of Biostatistics, University of Maryland Greenebaum Cancer Center, MSTF Suite 261, 10 South Pine Street, Baltimore, MD 21201, USA
Abstract:This paper considers non-parametric estimation of a multivariate failure time distribution function when only doubly censored data are available, which occurs in many situations such as epidemiological studies. In these situations, each of multivariate failure times of interest is defined as the elapsed time between an initial event and a subsequent event and the observations on both events can suffer censoring. As a consequence, the estimation of multivariate distribution is much more complicated than that for multivariate right- or interval-censored failure time data both theoretically and practically. For the problem, although several procedures have been proposed, they are only ad-hoc approaches as the asymptotic properties of the resulting estimates are basically unknown. We investigate both the consistency and the convergence rate of a commonly used non-parametric estimate and show that as the dimension of multivariate failure time increases or the number of censoring intervals of multivariate failure time decreases, the convergence rate for non-parametric estimate decreases, and is slower than that with multivariate singly right-censored or interval-censored data.
Keywords:Multivariate doubly interval-censored  Non-parametric maximum likelihood estimation  Strong consistency  Convergence rate
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