Efficient computation of nonparametric survival functions via a hierarchical mixture formulation

被引:0
|
作者
Yong Wang
Stephen M. Taylor
机构
[1] The University of Auckland,Department of Statistics
[2] Auckland University of Technology,undefined
来源
Statistics and Computing | 2013年 / 23卷
关键词
Nonparametric maximum likelihood; Survival function; Interval censoring; Clinical trial; Constrained Newton method; Disease-free survival;
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学科分类号
摘要
We propose a new algorithm for computing the maximum likelihood estimate of a nonparametric survival function for interval-censored data, by extending the recently-proposed constrained Newton method in a hierarchical fashion. The new algorithm makes use of the fact that a mixture distribution can be recursively written as a mixture of mixtures, and takes a divide-and-conquer approach to break down a large-scale constrained optimization problem into many small-scale ones, which can be solved rapidly. During the course of optimization, the new algorithm, which we call the hierarchical constrained Newton method, can efficiently reallocate the probability mass, both locally and globally, among potential support intervals. Its convergence is theoretically established based on an equilibrium analysis. Numerical study results suggest that the new algorithm is the best choice for data sets of any size and for solutions with any number of support intervals.
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页码:713 / 725
页数:12
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