Models for dependent data are distinguished by their targets of inference. Marginal models are useful when interest lies in quantifying associations averaged across a population of clusters. When the functional form of a covariate-outcome association is unknown, flexible regression methods are needed to allow for potentially non-linear relationships. We propose a novel marginal additive model (MAM) for modelling cluster-correlated data with non-linear population-averaged associations. The proposed MAM is a unified framework for estimation and uncertainty quantification of a marginal mean model, combined with inference for between-cluster variability and cluster-specific prediction. We propose a fitting algorithm that enables efficient computation of standard errors and corrects for estimation of penalty terms. We demonstrate the proposed methods in simulations and in application to (i) a longitudinal study of beaver foraging behaviour, and (ii) a spatial analysis of Loaloa infection in West Africa. R code for implementing the proposed methodology is available at https://github.com/awstringer1/mam.
翻译:依附数据模型按其推断目标加以区分。当兴趣在于量化各组群之间平均联系时,边际模型是有用的。当共变结果协会的功能形式未知时,需要灵活的回归方法,以便能够建立潜在的非线性关系。我们提议了一个新的边际添加模型(MAM),用于与非线性人口平均协会建立集束相关数据模型。拟议的MAM是估计和不确定地量化一个边际平均模型的统一框架,并结合对集群变异性和集束特定预测的推论。我们提议了一个适当的算法,以便能够有效地计算标准差错,纠正估计刑罚条件。我们展示了模拟和应用中的拟议方法,以(一) 长距离研究动物生长行为,(二) 西非洛洛拉感染的空间分析。执行拟议方法的R代码见https://github.com/awstringer1/mam。