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A maximum likelihood estimator for left-truncated lifetimes based on probabilistic prior information about time of occurrence

机译:基于有关发生时间的概率先验信息的左截短寿命的最大似然估计

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In forestry, many processes of interest are binary and they can be modeled using lifetime analysis. However, available data are often incomplete, being interval- and right-censored as well as left-truncated, which may lead to biased parameter estimates. While censoring can be easily considered in lifetime analysis, left truncation is more complicated when individual age at selection is unknown. In this study, we designed and tested a maximum likelihood estimator that deals with left truncation by taking advantage of prior knowledge about the time when the individuals enter the experiment. Whenever a model is available for predicting the time of selection, the distribution of the delayed entries can be obtained using Bayes' theorem. It is then possible to marginalize the likelihood function over the distribution of the delayed entries in the experiment to assess the joint distribution of time of selection and time to event. This estimator was tested with continuous and discrete Gompertz-distributed lifetimes. It was then compared with two other estimators: a standard one in which left truncation was not considered and a second estimator that implemented an analytical correction. Our new estimator yielded unbiased parameter estimates with empirical coverage of confidence intervals close to their nominal value. The standard estimator leaded to an overestimation of the long-term probability of survival.
机译:在林业中,许多感兴趣的过程都是二元的,可以使用寿命分析对其进行建模。但是,可用数据通常不完整,会被间隔和右删减以及被左截断,这可能导致参数估计有偏差。尽管可以在生命周期分析中轻松地检查检查,但是当选择的单个年龄未知时,左截断会更加复杂。在这项研究中,我们设计并测试了一个最大似然估计器,该估计器通过利用有关个体进入实验时间的先验知识来处理左截断。只要有模型可用于预测选择时间,就可以使用贝叶斯定理获得延迟条目的分布。然后可以在实验中延迟条目的分布上边缘化似然函数,以评估选择时间和事件发生时间的联合分布。该估计量已通过连续和离散的Gompertz分布寿命进行了测试。然后将其与其他两个估计量进行比较:一个不考虑左截断的标准估计量,另一个进行分析校正的估计量。我们的新估算器产生了无偏参数估算值,其经验覆盖范围接近其标称值。标准估计量导致对长期生存概率的高估。

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