From Data to Causes I: Building A General Cross-Lagged Panel Model (GCLM)

Volume: 23, Issue: 4, Pages: 651 - 687
Published: May 21, 2019
Abstract
This is the first paper in a series of two that synthesizes, compares, and extends methods for causal inference with longitudinal panel data in a structural equation modeling (SEM) framework. Starting with a cross-lagged approach, this paper builds a general cross-lagged panel model (GCLM) with parameters to account for stable factors while increasing the range of dynamic processes that can be modeled. We illustrate the GCLM by examining the...
Paper Details
Title
From Data to Causes I: Building A General Cross-Lagged Panel Model (GCLM)
Published Date
May 21, 2019
Volume
23
Issue
4
Pages
651 - 687
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