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SEMIPARAMETRIC MAXIMUM LIKELIHOOD INFERENCE FOR TRUNCATED OR BIASED-SAMPLING DATA

机译:截断或偏置采样数据的半参数最大似然推断

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摘要

Sample selection bias has long been recognized in many fields including clinical trials, epidemiology studies, genome-wide association studies, and wildlife management. This paper investigates the maximum likelihood estimation for censored survival data with selection bias under the Cox regression models where the selection process is modeled parametrically. A novel expectation-maximization algorithm is proposed and shown to have considerable computational advantages. Rigorous asymptotic properties of the estimator are established. Extensive simulation studies and a data analysis are conducted to investigate the performance of the proposed estimation procedure.
机译:长期以来,在许多领域,包括临床试验,流行病学研究,全基因组关联研究和野生动植物管理,人们都认识到样本选择偏见。本文研究了在Cox回归模型下具有选择偏差的审查的生存数据的最大似然估计,其中选择过程是参数化建模的。提出了一种新颖的期望最大化算法,该算法具有显着的计算优势。建立了估计器的严格渐近性质。进行了广泛的仿真研究和数据分析,以研究所提出的估计程序的性能。

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