用Lambert函数估计具有正态分布随机截距的共享脆弱性模型

H. Charvat
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引用次数: 0

摘要

共享脆弱性模型,即包含随机效应乘法作用于风险的审查数据的风险回归模型,通常用于分析具有层次结构的事件时间数据。当随机效应被假设为正态分布时,集群特有的边际似然没有封闭形式的表达式。逼近这类积分的一种有效方法是自适应高斯-埃尔米特正交法(AGHQ)。然而,该方法需要对定义特定于聚类的边际似然的表达式中的被积函数的模式进行估计,一般是通过对每个似然函数的评估在聚类级别进行嵌套优化得到。在这项工作中,我们证明了在包含正态随机截距的参数共享脆弱性模型的情况下,集群特定模式可以通过使用Lambert函数的主分支解析确定。除了不需要嵌套优化过程外,它还提供了近似似然的梯度和Hessian的封闭形式公式,使其通过牛顿型算法的最大化变得方便和高效。基于lambert的AGHQ (LAGHQ)可以应用于其他涉及类似积分的问题,例如正态分布随机截距泊松模型和从泊松对数正态分布计算概率。
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Using the Lambert Function to Estimate Shared Frailty Models with a Normally Distributed Random Intercept
Abstract Shared frailty models, that is, hazard regression models for censored data including random effects acting multiplicatively on the hazard, are commonly used to analyze time-to-event data possessing a hierarchical structure. When the random effects are assumed to be normally distributed, the cluster-specific marginal likelihood has no closed-form expression. A powerful method for approximating such integrals is the adaptive Gauss-Hermite quadrature (AGHQ). However, this method requires the estimation of the mode of the integrand in the expression defining the cluster-specific marginal likelihood: it is generally obtained through a nested optimization at the cluster level for each evaluation of the likelihood function. In this work, we show that in the case of a parametric shared frailty model including a normal random intercept, the cluster-specific modes can be determined analytically by using the principal branch of the Lambert function, . Besides removing the need for the nested optimization procedure, it provides closed-form formulas for the gradient and Hessian of the approximated likelihood making its maximization by Newton-type algorithms convenient and efficient. The Lambert-based AGHQ (LAGHQ) might be applied to other problems involving similar integrals, such as the normally distributed random intercept Poisson model and the computation of probabilities from a Poisson lognormal distribution.
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