The analysis of longitudinal, heterogeneous or unbalanced clustered data is of primary importance to a wide range of applications. The Linear Mixed Model (LMM) is a popular and flexible extension of the linear model specifically designed for such purposes. Historically, a large proportion of material published on the LMM concerns the application of popular numerical optimization algorithms, such as Newton-Raphson, Fisher Scoring and Expectation Maximization to single-factor LMMs (i.e. LMMs that only contain one "factor" by which observations are grouped). However, in recent years, the focus of the LMM literature has moved towards the development of estimation and inference methods for more complex, multi-factored designs. In this paper, we present and derive new expressions for the extension of an algorithm classically used for single-factor LMM parameter estimation, Fisher Scoring, to multiple, crossed-factor designs. Through simulation and real data examples, we compare five variants of the Fisher Scoring algorithm with one another, as well as against a baseline established by the R package lmer, and find evidence of correctness and strong computational efficiency for four of the five proposed approaches. Additionally, we provide a new method for LMM Satterthwaite degrees of freedom estimation based on analytical results, which does not require iterative gradient estimation. Via simulation, we find that this approach produces estimates with both lower bias and lower variance than the existing methods.
翻译:对纵向、差异或不平衡的集群数据的分析对于范围广泛的应用至关重要。线性混合模型(LMM)是专门为此类目的设计的线性模型的广受欢迎的灵活扩展。历史上,LMMM上出版的大量材料涉及通用数字优化算法的应用,如牛顿-拉弗松、渔业Scoring和期望最大化为单一因素LMMs(即只包含一个“因素”的LMMMs),但近年来,LMM文献的重点逐渐转向为更复杂、多要素设计制定估算和推断方法。在本文中,我们提出和提出新的表达方式,用于对单一因素LMMM参数估算、Fisherish Scoring和期望最大化为单因素LMMM(即只包含一个“因素”对观察进行分组的变量)。然而,我们通过模拟和真实数据实例,将Vicerish Scoring Scorporation的五种变种变式与另一个变式,以及Rprogram lmer lm确定的基线,并找到更准确性和更强的计算方法的证据。我们提出的标准性估算结果,我们提出的第四种标准的计算效率需要我们提出的第四种计算。