This note is concerned with an accurate and computationally efficient variational bayesian treatment of mixed-effects modelling. We focus on group studies, i.e. empirical studies that report multiple measurements acquired in multiple subjects. When approached from a bayesian perspective, such mixed-effects models typically rely upon a hierarchical generative model of the data, whereby both within- and between-subject effects contribute to the overall observed variance. The ensuing VB scheme can be used to assess statistical significance at the group level and/or to capture inter-individual differences. Alternatively, it can be seen as an adaptive regularization procedure, which iteratively learns the corresponding within-subject priors from estimates of the group distribution of effects of interest (cf. so-called "empirical bayes" approaches). We outline the mathematical derivation of the ensuing VB scheme, whose open-source implementation is available as part the VBA toolbox.
翻译:本说明关注对混合效应模型的准确和计算高效的变式波段处理,我们侧重于分组研究,即报告在多个主题中取得的多重测量结果的经验性研究。从海湾角度探讨时,这种混合效应模型通常依赖于数据的等级分级模型,据此,在主题内和主题间的影响都可促成观察到的总体差异。随后的VB计划可用于评估群体一级的统计意义和/或捕捉个人之间的差异。或者,它可被视为适应性正规化程序,反复从对利益效应群体分布的估计(参见所谓的“精神带”方法)中了解相应的主题前科。我们概述了随后的VB计划的数学衍生,其开源实施作为VBA工具箱的一部分。