A general algorithm for non-parametric maximum likelihood estimator of stochastically ordered survival functions from case 2 interval-censored data

In this paper, we study an algorithm to compute the non-parametric maximum likelihood estimator of stochastically ordered survival functions from case 2 interval-censored data. The algorithm, simply denoted by SQP (sequential quadratic programming), re-parameterizes the likelihood function to make t...

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Published inCommunications in statistics. Simulation and computation Vol. 48; no. 3; pp. 807 - 818
Main Authors Son, W., Kim, Y., Lim, J., Kuo, H.-C.
Format Journal Article
LanguageEnglish
Published Philadelphia Taylor & Francis 16.03.2019
Taylor & Francis Ltd
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ISSN0361-0918
1532-4141
DOI10.1080/03610918.2017.1400052

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Summary:In this paper, we study an algorithm to compute the non-parametric maximum likelihood estimator of stochastically ordered survival functions from case 2 interval-censored data. The algorithm, simply denoted by SQP (sequential quadratic programming), re-parameterizes the likelihood function to make the order constraints as a set of linear constraints, approximates the log-likelihood function as a quadratic function, and updates the estimate by solving a quadratic programming. We particularly consider two stochastic orderings, simple and uniform orderings, although the algorithm can also be applied to many other stochastic orderings. We illustrate the algorithm using the breast cancer data reported in Finkelstein and Wolfe ( 1985 ).
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ISSN:0361-0918
1532-4141
DOI:10.1080/03610918.2017.1400052