纵向数据
纵向研究
心理学
潜变量
潜在增长模型
潜变量模型
差异(会计)
计量经济学
光学(聚焦)
统计
发展心理学
计算机科学
人工智能
数据挖掘
数学
物理
会计
光学
业务
作者
Kevin J. Grimm,Pega Davoudzadeh,Nilàm Ram
摘要
Longitudinal data analytic techniques include a complex array of statistical techniques from repeated-measures analysis of variance, mixed-effects models, and time-series analysis, to longitudinal latent variable models (e.g., growth models, dynamic factor models) and mixture models (longitudinal latent profile analysis, growth mixture models). In this article, we focus our attention on the rationales of longitudinal research laid out by Baltes and Nesselroade (1979) and discuss the advancements in the analysis of longitudinal data since their landmark paper. We highlight the developments in growth and change analysis and its derivatives because these models best capture the rationales for conducting longitudinal research. We conclude with additional rationales of longitudinal research brought about by the development of new analytic techniques.
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