Partially monotone tensor spline estimation of the joint distribution function with bivariate current status data

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2012-06-01

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Abstract

The analysis of the joint cumulative distribution function (CDF) 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 CDF with bivariate current status data. The I -splines are used to approximate the joint CDF in order to simplify the numerical computation of a constrained maximum likelihood estimation problem. The generalized gradient projection algorithm is used to compute the constrained optimization problem. Based on the properties of B-spline basis functions it is shown that the proposed tensor spline-based nonparametric sieve maximum likelihood estimator is consistent with a rate of convergence potentially better than n1/3 under some mild 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. © Institute of Mathematical Statistics, 2012.

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10.1214/12-AOS1016

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Wu, Y, and Y Zhang (2012). Partially monotone tensor spline estimation of the joint distribution function with bivariate current status data. Annals of Statistics, 40(3). pp. 1609–1636. 10.1214/12-AOS1016 Retrieved from https://hdl.handle.net/10161/7384.

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Scholars@Duke

Wu

Yuan Wu

Associate Professor in Biostatistics & Bioinformatics

Survival analysis, Sequential clinical trial design, Machine learning, Causal inference, Non/Semi-parametric method, Statistical computing


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