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首页> 外文期刊>Journal of statistical computation and simulation >Bias corrected MLEs under progressive type-II censoring scheme
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Bias corrected MLEs under progressive type-II censoring scheme

机译:渐进式II型检查方案下的偏倚校正的MLE

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摘要

Censoring frequently occurs in survival analysis but naturally observed lifetimes are not of a large size. Thus, inferences based on the popular maximum likelihood (ML) estimation which often give biased estimates should be corrected in the sense of bias. Here, we investigate the biases of ML estimates under the progressive type-II censoring scheme (pIIcs). We use a method proposed in Efron and Johnstone [Fisher's information in terms of the hazard rate. Technical Report No. 264, January 1987, Stanford University, Stanford, California; 1987] to derive general expressions for bias corrected ML estimates under the pIIcs. This requires derivation of the Fisher information matrix under the pIIcs. As an application, exact expressions are given for bias corrected ML estimates of the Weibull distribution under the pIIcs. The performance of the bias corrected ML estimates and ML estimates are compared by simulations and a real data application.
机译:生存分析中经常会进行审查,但是自然观察到的寿命并不长。因此,基于流行的最大似然(ML)估计的推论(通常会给出有偏差的估计)应在有偏差的意义上进行校正。在这里,我们调查在渐进式II型审查方案(pIIcs)下ML估计的偏差。我们使用Efron和Johnstone [Fisher的信息中提出的危险率方面的方法。 1987年1月,第264号技术报告,加利福尼亚斯坦福大学; 1987]得出pIIcs下经偏倚校正的ML估计的一般表达式。这需要在pIIcs下推导Fisher信息矩阵。作为应用,给出了pIIcs下Weibull分布的偏倚校正ML估计的精确表达式。通过仿真和实际数据应用,对经过偏差校正的ML估计和ML估计的性能进行比较。

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