Inference With Cross-Lagged Effects-Problems in Time

被引:4
作者
Driver, Charles C. [1 ]
机构
[1] Univ Zurich, Inst Educ, Freiestr 36, CH-8032 Zurich, Switzerland
基金
瑞士国家科学基金会;
关键词
continuous time; dynamic model; cross-lagged; vector autoregressive; stochastic differential equation; STRUCTURAL EQUATION; CAUSAL INFERENCE; MODELS; DESIGN;
D O I
10.1037/met0000665
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
The interpretation of cross-effects from vector autoregressive models to infer structure and causality among constructs is widespread and sometimes problematic. I describe problems in the interpretation of cross-effects when processes that are thought to fluctuate continuously in time are, as is typically done, modeled as changing only in discrete steps (as in e.g., structural equation modeling)-zeroes in a discrete-time temporal matrix do not necessarily correspond to zero effects in the underlying continuous processes, and vice versa. This has implications for the common case when the presence or absence of cross-effects is used for inference about underlying causal processes. I demonstrate these problems via simulation, and also show that when an underlying set of processes are continuous in time, even relatively few direct causal links can result in much denser temporal effect matrices in discrete-time. I demonstrate one solution to these issues, namely parameterizing the system as a stochastic differential equation and focusing inference on the continuous-time temporal effects. I follow this with some discussion of issues regarding the switch to continuous-time, specifically regularization, appropriate measurement time lag, and model order. An empirical example using intensive longitudinal data highlights some of the complexities of applying such approaches to real data, particularly with respect to model specification, examining misspecification, and parameter interpretation.
引用
收藏
页码:174 / 202
页数:29
相关论文
共 85 条
[1]   Can we believe the DAGs? A comment on the relationship between causal DAGs and mechanisms [J].
Aalen, O. O. ;
Roysland, K. ;
Gran, J. M. ;
Kouyos, R. ;
Lange, T. .
STATISTICAL METHODS IN MEDICAL RESEARCH, 2016, 25 (05) :2294-2314
[2]  
Aalen O.O., 1987, Scandinavian Actuarial Journal, V1987, P177, DOI [10.1016/j.rser.2011.04.029, DOI 10.1016/J.RSER.2011.04.029, DOI 10.1080/03461238.1987.10413826]
[3]   Optimal Sampling Rates for Reliable Continuous-Time First-Order Autoregressive and Vector Autoregressive Modeling [J].
Adolf, Janne K. ;
Loossens, Tim ;
Tuerlinckx, Francis ;
Ceulemans, Eva .
PSYCHOLOGICAL METHODS, 2021, 26 (06) :701-718
[4]   Dynamic Structural Equation Models [J].
Asparouhov, Tihomir ;
Hamaker, Ellen L. ;
Muthen, Bengt .
STRUCTURAL EQUATION MODELING-A MULTIDISCIPLINARY JOURNAL, 2018, 25 (03) :359-388
[5]   POOLING CROSS SECTION AND TIME SERIES DATA IN ESTIMATION OF A DYNAMIC MODEL - DEMAND FOR NATURAL GAS [J].
BALESTRA, P ;
NERLOVE, M .
ECONOMETRICA, 1966, 34 (03) :585-&
[6]  
BELCHER J, 1994, J ROY STAT SOC B MET, V56, P141
[7]  
Boker Steven M, 2016, J Pers Oriented Res, V2, P34, DOI [10.17505/jpor.2016.05, 10.17505/jpor.2016.05]
[8]   Changing Dynamics: Time-Varying Autoregressive Models Using Generalized Additive Modeling [J].
Bringmann, Laura F. ;
Hamaker, Ellen L. ;
Vigo, Daniel E. ;
Aubert, Andre ;
Borsboom, Denny ;
Tuerlinckx, Francis .
PSYCHOLOGICAL METHODS, 2017, 22 (03) :409-425
[9]   Improved Insight into and Prediction of Network Dynamics by Combining VAR and Dimension Reduction [J].
Bulteel, Kirsten ;
Tuerlinckx, Francis ;
Brose, Annette ;
Ceulemans, Eva .
MULTIVARIATE BEHAVIORAL RESEARCH, 2018, 53 (06) :853-875
[10]  
Campbell D.T., 1963, PROBLEMS MEASURING C, P212