Title of article :
Density Estimators for Truncated Dependent Data
Author/Authors :
Fakoor, V. ferdowsi university of mashhad - School of Mathematical Sciences - Department of Statistics, مشهد, ايران , Jomhoori, S. university of birjand - Faculty of Sciences - Department of Statistics, بيرجند, ايران , Ganjeali, A. ferdowsi university of mashhad - School of Mathematical Sciences - Department of Statistics, مشهد, ايران
Abstract :
In some long term studies, a series of dependent and possibly truncated lifetime data may be observed. Suppose that the lifetimes have a common continuous distribution function F. A popular stochastic measure of the distance between the density function f of the lifetimes and its kernel estimate fn is the integrated square error (ISE). In this paper, we derive a central limit theorem for the integrated square error of the kernel density estimators in the left-truncation model. It is assumed that the lifetime observations form a stationary strong mixing sequence. A central limit theorem (CLT) for the ISE of the kernel hazard rate estimators is also presented.
Keywords :
v Bandwidth , integrated square error , Kaplan , Meier estimator , kernel density estimator , strong mixing , truncated dependent data
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)