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Hierarchical Linear Modeling in Organizational Research: Longitudinal Data Outside the Context of Growth Modeling

机译:组织研究中的分层线性建模:增长建模范围之外的纵向数据

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摘要

Organizational researchers, including those carrying out occupational stress research, often conduct longitudinal studies. Hierarchical linear modeling (HLM; also known as multilevel modeling and random regression) can efficiently organize analyses of longitudinal data by including within- and between-person levels of analysis. A great deal of longitudinal research has been conducted in the context of growth studies in which change in the dependent variable is examined in relation to the passage of time. HLM can treat longitudinal data, including data outside the context of the growth study, as nested data, reducing the problem of censoring. Within-person equation coefficients can represent the impact of Time t- 1 working conditions on Time t outcomes using all appropriate pairs of data points. Time itself need not be an independent variable of interest.
机译:组织研究人员,包括进行职业压力研究的人员,经常进行纵向研究。分层线性建模(HLM;也称为多级建模和随机回归)可以通过包括人际内部和人际之间的分析级别来有效地组织纵向数据的分析。在增长研究的背景下进行了许多纵向研究,其中研究了因变量的变化与时间的关系。 HLM可以将纵向数据(包括增长研究范围之外的数据)视为嵌套数据,从而减少了审查问题。人内方程系数可以使用所有适当的数据点对来表示时间t-1工作条件对时间t结果的影响。时间本身不必是关注的独立变量。

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