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Inference with cross-lagged effects-Problems in time.

Charles C Driver1

  • 1Institute of Education, University of Zurich.

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This summary is machine-generated.

Discrete-time models can misinterpret continuous processes, affecting causal inference. Continuous-time modeling using stochastic differential equations offers a more accurate approach to understanding dynamic systems.

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Area of Science:

  • Quantitative Psychology
  • Statistical Modeling
  • Causal Inference

Background:

  • Vector autoregressive (VAR) models are widely used to infer causality from cross-effects.
  • Interpreting these cross-effects can be problematic when continuous processes are modeled discretely.

Purpose of the Study:

  • To highlight the interpretive issues of discrete-time models for continuous processes.
  • To propose and demonstrate continuous-time modeling as a solution for accurate causal inference.

Main Methods:

  • Simulations were used to demonstrate problems with discrete-time models.
  • Stochastic differential equations (SDEs) were parameterized for continuous-time inference.
  • An empirical example with intensive longitudinal data was analyzed.

Main Results:

  • Discrete-time models can inaccurately represent continuous processes, leading to misinterpretations of causal effects.
  • Continuous-time models reveal denser effect matrices than expected from discrete models.
  • Switching to continuous-time modeling requires careful consideration of regularization, time lag, and model order.

Conclusions:

  • Continuous-time modeling provides a more accurate framework for inferring causality from dynamic systems.
  • Proper model specification and parameter interpretation are crucial when applying continuous-time approaches to real-world data.