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Fisher Scoring for crossed factor linear mixed models

机译:Fisher评分交叉因子线性混合模型

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摘要

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 lme4, 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.
机译:对纵向,异构或不平衡集群数据的分析对广泛的应用程度主要重要。线性混合模型(LMM)是专门用于此类目的的线性模型的流行且灵活的扩展。从历史上看,LMM上发表的大部分材料涉及流行的数值优化算法,例如牛顿 - 拉文申,Fisher评分和期望最大化到单因素LMM(即仅包含一个“因子”的LMMS分组)。然而,近年来,LMM文献的重点迈向更复杂,多因素设计的估算和推理方法的发展。在本文中,我们展示并推出了用于分类用于单因素LMM参数估计,Fisher评分的算法扩展的新表达式,到多个交叉因子设计。通过仿真和实际数据示例,我们将Fisher评分算法的五个变体相互比较,以及通过R包LME4建立的基线,并找到了四种提出方法中的四种方法的正确性和强大的计算效率。此外,我们为基于分析结果的基于分析结果提供了一种新的LMM Satterthwaite自由度估计方法,这不需要迭代梯度估计。通过仿真,我们发现这种方法产生了比现有方法更低的偏差和较低的差异。

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