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Variable selection in discrete survival models including heterogeneity

机译:离散生存模型中的变量选择,包括异质性

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Several variable selection procedures are available for continuous time-toevent data. However, if time is measured in a discrete way and therefore many ties occur models for continuous time are inadequate. We propose penalized likelihood methods that perform efficient variable selection in discrete survival modeling with explicit modeling of the heterogeneity in the population. The method is based on a combination of ridge and lasso type penalties that are tailored to the case of discrete survival. The performance is studied in simulation studies and an application to the birth of the first child.
机译:有几种变量选择过程可用于连续的事件时间数据。但是,如果以离散的方式测量时间,因此发生许多联系,那么连续时间的模型就不够用了。我们提出了一种惩罚似然方法,该方法在人口生存异质性的显式建模的离散生存模型中执行有效的变量选择。该方法基于为离散生存情况量身定制的岭和套索类型罚分的组合。在模拟研究中对性能进行了研究,并将其应用于第一个孩子的出生。

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