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Estimation and goodness-of-fit for the Cox model with various types of censored data
Authors:Jian-Jian Ren  Bin He
Affiliation:a University of Central Florida, United States
b Siemens P.G. CORP, United States
Abstract:The currently existing estimation methods and goodness-of-fit tests for the Cox model mainly deal with right censored data, but they do not have direct extension to other complicated types of censored data, such as doubly censored data, interval censored data, partly interval-censored data, bivariate right censored data, etc. In this article, we apply the empirical likelihood approach to the Cox model with complete sample, derive the semiparametric maximum likelihood estimators (SPMLE) for the Cox regression parameter and the baseline distribution function, and establish the asymptotic consistency of the SPMLE. Via the functional plug-in method, these results are extended in a unified approach to doubly censored data, partly interval-censored data, and bivariate data under univariate or bivariate right censoring. For these types of censored data mentioned, the estimation procedures developed here naturally lead to Kolmogorov-Smirnov goodness-of-fit tests for the Cox model. Some simulation results are presented.
Keywords:Bivariate right censored data   Bivariate data under univariate right censoring   Bootstrap   Doubly censored data   Empirical likelihood   Goodness-of-fit   Partly interval-censored data
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