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Combining parametric, semi-parametric, and non-parametric survival models with stacked survival models

机译:将参数,半参数和非参数生存模型与堆叠生存模型相结合

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摘要

For estimating conditional survival functions, non-parametric estimators can be preferred to parametric and semi-parametric estimators due to relaxed assumptions that enable robust estimation. Yet, even when misspecified, parametric and semi-parametric estimators can possess better operating characteristics in small sample sizes due to smaller variance than non-parametric estimators. Fundamentally, this is a bias-variance trade-off situation in that the sample size is not large enough to take advantage of the low bias of non-parametric estimation. Stacked survival models estimate an optimally weighted combination of models that can span parametric, semi-parametric, and non-parametric models by minimizing prediction error. An extensive simulation study demonstrates that stacked survival models consistently perform well across a wide range of scenarios by adaptively balancing the strengths and weaknesses of individual candidate survival models. In addition, stacked survival models perform as well as or better than the model selected through cross-validation. Finally, stacked survival models are applied to a well-known German breast cancer study.
机译:为了估计条件生存函数,非参数估计器可能比参数和半参数估计器更可取,因为它们的假设宽松,可以进行可靠的估计。但是,即使参数指定不正确,由于与非参数估算器相比方差较小,因此参数和半参数估算器在较小的样本量中仍具有更好的工作特性。从根本上讲,这是偏差-偏差权衡的情况,因为样本大小不足以利用非参数估计的低偏差。堆叠的生存模型估计模型的最佳加权组合,该模型可以通过最小化预测误差来跨越参数,半参数和非参数模型。广泛的仿真研究表明,通过自适应地平衡各个候选生存模型的优缺点,堆叠式生存模型在各种情况下均能始终保持良好的性能。此外,堆叠生存模型的性能与通过交叉验证选择的模型一样好,甚至更好。最后,将堆叠生存模型应用于著名的德国乳腺癌研究。

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