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Model selection with the linear mixed effects model for longitudinal data.

机译:纵向数据的线性混合效应模型的模型选择。

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摘要

Model building or model selection with linear mixed models (LMM) is complicated by the presence of both fixed effects and random effects. The fixed effects structure and random effects structure are co-dependent, so selection of one influences the other.;Most presentations of LMM in psychology and education are based on a multi-level or hierarchical approach in which the variance-covariance matrix of the random effects is assumed to be positive definite with non-zero values for the variances. When the number of fixed effects and random effects is not known, the predominant approach to model building is a step-up procedure in which one starts with a limited model (e.g., few fixed and random intercepts) and then additional fixed effects and random effects are added based on statistical tests.;A procedure that has received less attention in psychology and education is top-down model building. In the top-down procedure, the initial model has a single random intercept but is loaded with fixed effects (also known as an "over-elaborate" model). Based on the over-elaborate fixed effects model, the need for additional random effects is determined. Once the number of random effects is selected, the fixed effects are tested to see if any can be omitted from the model.;There has been little if any examination of the ability of these procedures to identify a true population model (i.e., identifying a model that generated the data). The purpose of this dissertation is to examine the performance of the various model building procedures for exploratory longitudinal data analysis. Exploratory refers to the situation in which the correct number of fixed effects and random effects is unknown before the analysis.
机译:由于存在固定效应和随机效应,使用线性混合模型(LMM)建立模型或选择模型变得很复杂。固定效应结构和随机效应结构是相互依赖的,因此选择一种会影响另一种。LMM在心理学和教育领域的大多数介绍都基于多层次或分层方法,其中随机变量的方差-协方差矩阵假定效应为正定的,且方差为非零值。当固定效应和随机效应的数量未知时,建模的主要方法是逐步提高程序,其中从有限的模型(例如,很少的固定和随机截距)开始,然后是其他固定效应和随机效应自上而下的模型构建是一种在心理学和教育中受到较少关注的程序。在自顶向下的过程中,初始模型具有单个随机截距,但加载有固定效果(也称为“过度精心设计”的模型)。基于精心设计的固定效应模型,确定是否需要其他随机效应。一旦选择了随机效应的数量,就测试固定效应以查看是否可以从模型中忽略掉。;几乎没有检查过这些程序识别真实总体模型的能力(即,识别出一个总体模型)。生成数据的模型)。本文的目的是检验用于探索性纵向数据分析的各种模型构建程序的性能。探索性是指在分析之前未知正确数量的固定效应和随机效应的情况。

著录项

  • 作者

    Ryoo, Ji Hoon.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Statistics.;Psychology Psychometrics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 121 p.
  • 总页数 121
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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