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Choice between semi-parametric estimators of Markov and non-Markov multi-state models from coarsened observations : Choice between semi-parametric estimators of Markov and non-Markov multi-state models

机译:从粗化观测值中选择Markov多状态模型和非Markov多状态模型的半参数估计量:Markov多状态模型和非Markov多状态模型的半参数估计量的选择

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摘要

We consider models based on multivariate counting processes, including multi-state models. These models are specified semi-parametrically by a set of functions and real parameters. We consider inference for these models based on coarsened observations, focusing on families of smooth estimators such as produced by penalized likelihood. An important issue is the choice of model structure, for instance the choice between a Markov and some non-Markov models. We define in a general context the expected Kullback-Leibler criterion and we show that the likelihood based cross-validation ($LCV$) is a nearly unbiased estimator of it. We give a general form of an approximate of the leave-one-out $LCV$. The approach is studied in simulation and illustrated by estimating Markov and two semi-Markov illness-death models with application on dementia using data of a large cohort study.
机译:我们考虑基于多变量计数过程的模型,包括多状态模型。这些模型由一组函数和实际参数半参数指定。我们考虑基于粗化的观察对这些模型进行推论,重点是光滑估计量的族,例如由似然性产生的估计量。一个重要的问题是模型结构的选择,例如在马尔可夫模型和一些非马尔可夫模型之间的选择。我们在一般情况下定义了预期的Kullback-Leibler准则,并表明基于似然性的交叉验证($ LCV $)几乎是该估计的无偏估计量。我们给出遗忘的$ LCV $的近似形式。该方法已在模拟中进行了研究,并通过一项大型队列研究的数据估算了马尔可夫病和两个半马尔可夫病死模型,并将其应用于痴呆。

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