JSM 2011 Online Program

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Abstract Details

Activity Number: 407
Type: Contributed
Date/Time: Tuesday, August 2, 2011 : 2:00 PM to 3:50 PM
Sponsor: Biometrics Section
Abstract - #301128
Title: Partially Monotone Tensor Spline Estimation of the Joint Distribution Function with Bivariate Current
Author(s): Yuan Wu*+
Companies: University of Iowa
Address: 216 hawkeye court, Iowa City, IA, 52246,
Keywords: Bivariate current status data ; Constrained maximum likelihood estimation ; Empirical process ; Sieve maximum likelihood estimation ; Tensor spline basis functions
Abstract:

The analysis of the joint distribution function with bivariate event time data is a challenging problem both theoretically and numerically. This paper develops a tensor spline-based sieve maximum likelihood estimation method to estimate the joint distribution function with bivariate current status data. The I-spline basis functions are used in approximating the joint distribution function in order to simplify the numerical computation of constrained maximum likelihood estimation problem. The generalized gradient projection algorithm is used to compute the constrained optimization problem. The proposed tensor spline-based nonparametric sieve maximum likelihood estimator is shown to be consistent and the rate of convergence can be as good as forth root of sample size under some regularity conditions. The simulation studies with moderate sample sizes are carried out to demonstrate that the finite sample performance of the proposed estimator is generally satisfactory.


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