The multilevel model (MLM) is the popular approach to describe dependences of hierarchically clustered observations. A main feature is the capability to estimate (cluster-specific) random effect parameters, while their distribution describes the variation across clusters. However, the MLM can only model positive associations among clustered observations, and it is not suitable for small sample sizes. The limitation of the MLM becomes apparent when estimation methods produce negative estimates for random effect variances, which can be seen as an indication that observations are negatively correlated. A gentle introduction to Bayesian Covariance Structure Modelling (BCSM) is given, which makes it possible to model also negatively correlated observations. The BCSM does not model dependences through random (cluster-specific) effects, but through a covariance matrix. We show that this makes the BCSM particularly useful for small data samples. We draw specific attention to detect effects of a personalized intervention. The effect of a personalized treatment can differ across individuals, and this can lead to negative associations among measurements of individuals who are treated by the same therapist. It is shown that the BCSM enables the modeling of negative associations among clustered measurements and aids in the interpretation of negative clustering effects. Through a simulation study and by analysis of a real data example, we discuss the suitability of the BCSM for small data sets and for exploring effects of individualized treatments, specifically when (standard) MLM software produces negative or zero variance estimates.
翻译:多层次模型(MLM)是描述分层组合观测依赖性的流行方法,其主要特点是能够估计(特定组群)随机效应参数,而其分布则说明不同组群的差异。然而,MLM只能模拟集群观测之间的积极联系,不适合小样本规模。当估计方法产生随机效应差异的负面估计时,MLM的局限性就变得很明显,这可被视为观测结果存在负面关联的迹象。对Bayesian变异结构模型(BCSM)进行了温和的介绍,从而有可能模拟负面的观察。BCSM并不是通过随机(特定组群)效应来模拟依赖,而是通过共变矩阵模型来模拟依赖。我们表明,MCSM对小型数据样本特别有用。我们提请特别注意检测个性干预的效果。个人化处理的效果可能因个人而异,这可能导致由同一理疗师(BCSM)所治疗的个人的测量结果之间出现负面联系。它表明,BSMSM能够通过随机(具体通过我们模拟数据模型分析的模型分析对BCSM的负面联系进行负面的模型分析,以及支持对BSM的精确分析,具体数据效果进行模拟分析。