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Induced smoothing for the semiparametric accelerated failure time model: asymptotics and extensions to clustered data

机译:半参数加速故障时间模型的诱导平滑:渐近和聚类数据的扩展

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This paper extends the induced smoothing procedure of Brown & Wang (2006) for the semiparametric accelerated failure time model to the case of clustered failure time data. The resulting procedure permits fast and accurate computation of regression parameter estimates and standard errors using simple and widely available numerical methods, such as the Newton–Raphson algorithm. The regression parameter estimates are shown to be strongly consistent and asymptotically normal; in addition, we prove that the asymptotic distribution of the smoothed estimator coincides with that obtained without the use of smoothing. This establishes a key claim of Brown & Wang (2006) for the case of independent failure time data and also extends such results to the case of clustered data. Simulation results show that these smoothed estimates perform as well as those obtained using the best available methods at a fraction of the computational cost.
机译:本文将Brown&Wang(2006)的半参数加速失效时间模型的诱导平滑过程扩展到聚类失效时间数据的情况。结果程序可以使用简单且广泛使用的数值方法(例如Newton–Raphson算法)快速准确地计算回归参数估计值和标准误差。回归参数估计值显示出强一致且渐近正态;另外,我们证明了平滑估计量的渐近分布与不使用平滑获得的分布吻合。这确立了Brown&Wang(2006)对于独立故障时间数据的关键主张,并将这种结果扩展到了集群数据的情况。仿真结果表明,这些平滑的估计与使用最佳可用方法获得的估计效果一样好,而计算成本却很少。

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