Skip to main content
Article
Parametric Model Discrimination for Heavily Censored Survival Data
IEEE Transactions on Reliability
  • Lawrence Leemis, William & Mary
  • A. D. Block
Document Type
Article
Department/Program
Mathematics
Pub Date
6-1-2008
Abstract

Simultaneous discrimination among various parametric lifetime models is an important step in the parametric analysis of survival data. We consider a plot of the skewness versus the coefficient of variation for the purpose of discriminating among parametric survival models. We extend the method of Cox & Oakes from complete to censored data by developing an algorithm based on a competing risks model and kernel function estimation. A by-product of this algorithm is a nonparametric survival function estimate.

DOI
https://doi.org/10.1109/TR.2008.923488
Disciplines
Citation Information
Lawrence Leemis and A. D. Block. "Parametric Model Discrimination for Heavily Censored Survival Data" IEEE Transactions on Reliability Vol. 57 Iss. 2 (2008) p. 248 - 259
Available at: http://works.bepress.com/lawrence-leemis/23/