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Misspecification of the covariance matrix in the linear mixed model: A monte carlo simulation.

机译:线性混合模型中协方差矩阵的错误指定:蒙特卡洛模拟。

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摘要

The linear mixed model has become a popular method for analyzing longitudinal and cross sectional data due to its ability to overcome many of the limitations found using classical methods such as repeated measures analysis of variance or multivariate analysis of variance. Although the linear mixed model allows for flexible modeling of clustered data, the simulation research literature is not nearly as extensive as classical methods. This current study looks to add to this literature and the statistical properties associated with the linear mixed model under longitudinal data conditions.;Historically when using the linear mixed model to analyze longitudinal data, researchers have allowed the random effects to solely account for the dependency due to repeated measurements. This dependency arises in this case, from repeated measurements on the same individual and measurements taken closer in time would be more correlated than measurements taken further apart in time. If measurements are taken close in time (i.e. every hour, daily, weekly, etc.), the random effects alone may not adequately account for the dependency due to repeated measurements. In this case serial correlation may be present and need to be modeled.;Previous simulation work exploring the effects of misspecification of serial correlation have shown that the fixed effects tend to be unbiased, however evidence of bias show up in the variance of the random components of the model. In addition, some evidence of bias was found in the standard errors of the fixed effects. These simulation studies were done with all other model conditions being "perfect,'' including normally distributed random effects and larger sample size. The current simulation study looks to generalize to a wider variety of data conditions.;The current simulation study used a factorial design with four simulation conditions manipulated. These included: covariance structure, random effect distribution, number of subjects, and number of measurement occasions. Relative bias of the fixed and random components were explored descriptively and inferentially. In addition, the type I error rate was explored to examine any impact the simulation conditions had on the robustness of hypothesis testing. A second smaller study was also conducted that explicitly misspecified the random slope for time to see if serial correlation could overcome the misspecification of that random effect.;Results for the larger simulation study found no bias in the fixed effects. There was however evidence of bias in the random components of the model. The fitted and generated serial correlation structures as well as their interaction explained significant variation in the bias of the random components. The largest amounts of bias were found when the fitted structure was underspecified as independent. Type I error rates for the five fixed effects were just over 0.05, with many around 0.06. Many of the simulation conditions explained significant variation in the empirical type I error rates.;Study two again found no bias in the fixed effects. Just as in study one, bias was found in the random components and the fitted and generated serial correlation structures as well as the interaction between the two explaining significant variation in the relative bias statistics. Of most concern were the severely inflated type I error rates for the fixed effects associated with the slope terms. The average type I error rate was on average twice what would be expected and ranged as high as 0.25. The fitted serial correlation structure and the interaction between the fitted and generated serial correlation structure explained significant variation in these terms. More specifically, when the serial correlation was underspecified as independent in conjunction with a missing random effect for time, the type I error rate can become severely inflated.;Serial correlation does not appear to bias the fixed effects, therefore if point estimates are all that are desired serial correlation does not need to be modeled. However, if estimates of the random components or inference are concerned care needs to be taken to at least include serial correlation in the model when it is found in the data. In addition, if serial correlation is present and the model is misspecified without the random effect for time serious distortions of the empirical type I error rate occur. This would lead to rejecting many more true null hypotheses which would make conclusions extremely uncertain.
机译:线性混合模型克服了使用经典方法(例如方差的重复测量分析或方差的多变量分析)所发现的许多局限性,从而成为分析纵向和横截面数据的流行方法。尽管线性混合模型允许对聚类数据进行灵活建模,但是仿真研究文献并不像传统方法那样广泛。这项最新研究旨在为纵向数据条件下的线性混合模型以及相关的统计特性提供补充。历史上,当使用线性混合模型分析纵向数据时,研究人员已允许随机效应仅考虑因重复测量。在这种情况下,这种依赖性是由于对同一个人进行重复测量而得出的,与在时间上相距较远的测量结果相比,时间更近的测量结果的相关性更高。如果在时间上(即每小时,每天,每周等)进行近距离测量,则由于重复测量,仅凭随机效应可能无法充分说明依赖性。在这种情况下,可能存在序列相关性,需要对其进行建模。;先前的探索串行相关性错误指定影响的仿真工作表明,固定影响趋于无偏,但是在随机分量的方差中出现了偏差的证据。模型的此外,在固定效应的标准误差中发现了一些偏差的证据。这些模拟研究是在所有其他模型条件都“完美”的情况下完成的,包括正态分布的随机效应和更大的样本量。当前的模拟研究希望将其推广到更广泛的数据条件中。在四个模拟条件下进行操作,包括协方差结构,随机效应分布,主题数和测量次数,描述性和推论性地探讨了固定和随机成分的相对偏差,此外,还探讨了I型错误率为了检验模拟条件对假设检验的鲁棒性的影响,还进行了另一项较小的研究,即明确错误指定了时间的随机斜率,以查看序列相关性是否可以克服随机效应的误判。研究发现固定效应没有偏倚,但是有证据表明模型的随机成分。拟合和生成的序列相关结构及其相互作用说明了随机分量偏差的显着变化。当拟合结构未指定为独立结构时,会发现最大量的偏差。这五个固定影响的I型错误率刚好超过0.05,许多错误率约为0.06。许多模拟条件说明了经验I型错误率的显着变化。研究二再次发现固定效应没有偏差。就像在研究一中一样,在随机分量,拟合和生成的序列相关结构以及两者之间的相互作用中都发现了偏差,这说明了相对偏差统计中的显着变化。最令人担忧的是与坡度项相关的固定效应导致的I型错误率严重膨胀。 I型平均错误率平均是预期的两倍,范围高达0.25。拟合的序列相关结构以及拟合的和生成的序列相关结构之间的相互作用说明了这些术语的显着变化。更具体地说,当序列相关性被低估为独立的,并缺少时间上的随机效应时,I型错误率可能会严重膨胀。;串行相关性似乎不会使固定效应产生偏差,因此,如果点估计是全部所需的序列相关不需要建模。但是,如果涉及到随机成分或推论的估计,则需要注意的是,当在数据中找到模型时,至少要将序列相关性包括在模型中。此外,如果存在序列相关性并且模型指定不正确,而没有时间随机效应,则会发生经验I型错误率的严重失真。这将导致拒绝更多的真实零假设,这将使结论极为不确定。

著录项

  • 作者

    LeBeau, Brandon.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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