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Likelihood and conditional likelihood inference for generalized additive mixed models for clustered data

机译:聚类数据的广义加性混合模型的似然和条件似然推断

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摘要

Lin and Zhang (J. Roy. Statist. Soc. Ser. B 61 (1999) 381) proposed the generalized additive mixed model (GAMM) as a framework for analysis of correlated data, where normally distributed random effects are used to account for correlation in the data, and proposed to use double penalized quasi-likelihood (DPQL) to estimate the nonparametric functions in the model and marginal likelihood to estimate the smoothing parameters and variance components simultaneously. However, the normal distributional assumption for the random effects may not be realistic in many applications, and it is unclear how violation of this assumption affects ensuing inferences for GAMMs. For a particular class of GAMMs, we propose a conditional estimation procedure built on a conditional likelihood for the response given a sufficient statistic for the random effect, treating the random effect as a nuisance parameter, which thus should be robust to its distribution. In extensive simulation studies, we assess performance of this estimator under a range of conditions and use it as a basis for comparison to DPQL to evaluate the impact of violation of the normality assumption. The procedure is illustrated with application to data from the Multicenter AIDS Cohort Study (MACS).
机译:Lin和Zhang(J. Roy。Statist。Soc。Ser。B 61(1999)381)提出了广义加性混合模型(GAMM)作为分析相关数据的框架,其中使用正态分布的随机效应来说明相关性。在数据中,并建议使用双罚拟似然(DPQL)来估计模型中的非参数函数,并使用边际可能性来同时估计平滑参数和方差分量。但是,随机效应的正态分布假设在许多应用中可能并不现实,并且不清楚违反该假设如何影响GAMM的后续推论。对于一类特定的GAMM,我们提出了一个条件估计程序,该条件估计程序建立在响应的条件似然性基础上,并为随机效应提供了足够的统计量,将该随机效应视为令人讨厌的参数,因此对其分布应具有鲁棒性。在广泛的模拟研究中,我们评估该估计器在一系列条件下的性能,并将其用作与DPQL进行比较的基础,以评估违反正态性假设的影响。将该程序应用于多中心艾滋病队列研究(MACS)的数据进行了说明。

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