Identifying Heterogeneity in Dynamic Panel Models with Individual Parameter Contribution Regression
Publication date
2020-07-03
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
cc_by
Abstract
Dynamic panel models are a popular approach to study interrelationships between repeatedly measured variables. Often, dynamic panel models are specified and estimated within a structural equation modeling (SEM) framework. An endemic problem threatening the validity of such models is unmodelled heterogeneity. Recently, individual parameter contribution (IPC) regression was proposed as a flexible method to study heterogeneity in SEM parameters as a function of observed covariates. In the present paper, we derive how IPCs can be calculated for general maximum likelihood estimates and evaluate the performance of IPC regression to estimate group differences in dynamic panel models in discrete and continuous time. We show that IPC regression can be slightly biased in samples with large group differences and present a bias correction procedure. IPC regression showed generally promising results for discrete time models. However, due to highly nonlinear parameter constraints, caution is indicated when applying IPC regression to continuous time models.
Keywords
Autoregressive cross-lagged model, continuous time modeling, heterogeneity, structural equation modeling, General Decision Sciences, Modelling and Simulation, Sociology and Political Science, Economics, Econometrics and Finance(all)
Citation
Arnold, M, Oberski, D L, Brandmaier, A M & Voelkle, M C 2020, 'Identifying Heterogeneity in Dynamic Panel Models with Individual Parameter Contribution Regression', Structural Equation Modeling, vol. 27, no. 4, pp. 613-628. https://doi.org/10.1080/10705511.2019.1667240