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Stacked Laplace-EM algorithm for duration models with time-varying and random effects

机译:具有时变和随机效应的持续时间模型的堆叠Laplace-EM算法

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An extension of the Cox proportional hazards model for clustered survival data is proposed. This allows both general random effects (frailties) and time-varying regression coefficients, the latter being smooth functions of time. The model is fitted using a mixed-model representation of penalized spline smoothing which offers a unified framework for estimation of the baseline hazard, the smooth effects and the random effects. The estimator is computed using a stacked laplace-EM (SLaEM) algorithm. More specifically, the smoothing parameters are integrated out in the log likelihood via a Laplace approximation. The approximation itself involves an integrated log-likelihood over the random cluster effects, for which the EM algorithm is used. A marginal Akaike information criterion is developed for selection among possible candidate models. The time-varying and mixed effects model is applied to unemployment data taken from the German Socio-Economic Panel. The duration of unemployment is modeled in a flexible way including smooth covariate effects and individual random effects.
机译:提出了Cox比例风险模型对聚类生存数据的扩展。这既允许一般的随机效应(脆弱性),又可以随时间变化的回归系数,后者是时间的平滑函数。该模型使用惩罚样条平滑的混合模型表示进行拟合,该模型提供了用于估计基线危害,平滑效果和随机效果的统一框架。估算器是使用堆叠式Laplace-EM(SLaEM)算法计算的。更具体地说,通过拉普拉斯逼近将平滑参数整合到对数似然中。近似本身涉及对随机簇效应的综合对数似然,为此使用了EM算法。开发了一个边际的赤池信息准则,以便在可能的候选模型中进行选择。时变和混合效应模型适用于从德国社会经济专家小组获得的失业数据。失业的持续时间以灵活的方式建模,包括平滑的协变量效应和个体随机效应。

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