We study approximation methods for a large class of mixed models with a probit link function that includes mixed versions of the binomial model, the multinomial model, and generalized survival models. The class of models is special because the marginal likelihood can be expressed as Gaussian weighted integrals or as multivariate Gaussian cumulative density functions. The latter approach is unique to the probit link function models and has been proposed for parameter estimation in complex, mixed effects models. However, it has not been investigated in which scenarios either form is preferable. Our simulations and data example show that neither form is preferable in general and give guidance on when to approximate the cumulative density functions and when to approximate the Gaussian weighted integrals and, in the case of the latter, which general purpose method to use among a large list of methods.
翻译:我们研究一大批混合模型的近似方法,这些混合模型具有活性链接功能,包括二元制模型、多名模型和通用生存模型的混合版本。模型的类别是特殊的,因为边际可能性可以以高斯加权构件表示,或以多变量高斯累积密度函数表示。后一种方法对普尔比链接功能模型是独特的,并提议在复杂、混合效应模型中进行参数估计。然而,没有调查哪一种假设是可取的。我们的模拟和数据实例表明,两种形式一般都不可取,而是指导何时接近累积密度函数,何时接近高斯加权构件,就后者而言,在大量方法清单中采用什么通用方法。