Title of article :
The extended Glivenko-Cantelli property for Kernel-Smoothed estimator of the cumulative distribution function in the length-biased sampling
Author/Authors :
Ajami ، Masoud Department of Statistics - Faculty of Mathematical Sciences - Vali-e-Asr University of Rafsanjan , Zamini ، Raheleh Department of Mathematics - Faculty of Mathematical Sciences and Computer - Kharazmi University , Amir Jahanshahi ، Mahdi Department of Statistics - Faculty of Mathematics - University of Sistan and Baluchestan
From page :
535
To page :
545
Abstract :
When the probability of selecting an individual from a population is proportional to its length, the resulting distribution of observation will exhibit length bias. This distribution is referred to as a length-biased distribution. Let {Yi;i = 1, . . . , n} be a sample from a length-biased population with cumulative distribution function G(·). In this paper we consider Cox’s empirical estimator F c n(·) and the smoothed kernel-type estimator F s n(·) of F(·). Under suitable conditions, the extended Glivenko-Cantelli theorem for F c n(·) and F s n(·) are proved. Also, the validity of the extended Glivenko-Cantelli property for the smoother estimator F s n(·) is investigated using a simulation study.
Keywords :
Law of iterated logarithm , Length , biased data , Smoothed estimator , Strong consistency
Journal title :
Journal of Mahani Mathematical Research Center
Journal title :
Journal of Mahani Mathematical Research Center
Record number :
2768920
Link To Document :
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