自回归模型
计量经济学
面板数据
结构方程建模
计算机科学
推论
GCLM公司
潜变量
数学
人工智能
机器学习
生物化学
基因
下调和上调
化学
GCLC公司
作者
Michael J. Zyphur,Manuel C. Voelkle,Louis Tay,Paul D. Allison,Kristopher J. Preacher,Zhen Zhang,Ellen L. Hamaker,Ali Shamsollahi,Dean Pierides,Peter Koval,Ed Diener
标识
DOI:10.1177/1094428119847280
摘要
This article compares a general cross-lagged model (GCLM) to other panel data methods based on their coherence with a causal logic and pragmatic concerns regarding modeled dynamics and hypothesis testing. We examine three “static” models that do not incorporate temporal dynamics: random- and fixed-effects models that estimate contemporaneous relationships; and latent curve models. We then describe “dynamic” models that incorporate temporal dynamics in the form of lagged effects: cross-lagged models estimated in a structural equation model (SEM) or multilevel model (MLM) framework; Arellano-Bond dynamic panel data methods; and autoregressive latent trajectory models. We describe the implications of overlooking temporal dynamics in static models and show how even popular cross-lagged models fail to control for stable factors over time. We also show that Arellano-Bond and autoregressive latent trajectory models have various shortcomings. By contrasting these approaches, we clarify the benefits and drawbacks of common methods for modeling panel data, including the GCLM approach we propose. We conclude with a discussion of issues regarding causal inference, including difficulties in separating different types of time-invariant and time-varying effects over time.
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