Leung Lai Tze, Shih Mei-Chiung, Wong Samuel Po-Shing
Department of Statistics, Stanford University, Stanford, California 94305, USA.
Biometrics. 2006 Mar;62(1):159-67. doi: 10.1111/j.1541-0420.2005.00391.x.
To circumvent the computational complexity of likelihood inference in generalized mixed models that assume linear or more general additive regression models of covariate effects, Laplace's approximations to multiple integrals in the likelihood have been commonly used without addressing the issue of adequacy of the approximations for individuals with sparse observations. In this article, we propose a hybrid estimation scheme to address this issue. The likelihoods for subjects with sparse observations use Monte Carlo approximations involving importance sampling, while Laplace's approximation is used for the likelihoods of other subjects that satisfy a certain diagnostic check on the adequacy of Laplace's approximation. Because of its computational tractability, the proposed approach allows flexible modeling of covariate effects by using regression splines and model selection procedures for knot and variable selection. Its computational and statistical advantages are illustrated by simulation and by application to longitudinal data from a fecundity study of fruit flies, for which overdispersion is modeled via a double exponential family.
为了规避广义混合模型中似然推断的计算复杂性,这些模型假设协变量效应的线性或更一般的加性回归模型,拉普拉斯对似然中多重积分的近似方法已被普遍使用,但未解决稀疏观测个体近似的充分性问题。在本文中,我们提出了一种混合估计方案来解决这个问题。对于稀疏观测的个体,似然使用涉及重要性抽样的蒙特卡罗近似,而拉普拉斯近似用于其他通过拉普拉斯近似充分性的特定诊断检验的个体似然。由于其计算易处理性,所提出的方法允许通过使用回归样条以及用于节点和变量选择的模型选择程序来灵活地对协变量效应进行建模。通过模拟以及应用于果蝇繁殖力研究的纵向数据说明了其计算和统计优势,对于该数据,通过双指数族对过度离散进行建模。