Estimating causal effects from panel data with dynamic multivariate panel models




Helske Jouni, Tikka Santtu

PublisherElsevier

2024

Advances in Life Course Research

Advances in life course research

Adv Life Course Res

100617

60

1569-4909

1879-6974

DOIhttps://doi.org/10.1016/j.alcr.2024.100617

https://doi.org/10.1016/j.alcr.2024.100617

https://research.utu.fi/converis/portal/detail/Publication/404679602



Panel data are ubiquitous in scientific fields such as social sciences. Various modeling approaches have been presented for observational causal inference based on such data. Existing approaches typically impose restrictive assumptions on the data-generating process such as Gaussian responses or time-invariant effects, or they can only consider short-term causal effects. To surmount these restrictions, we present the dynamic multivariate panel model (DMPM) that supports time-varying, time-invariant, and individual-specific effects, multiple responses across a wide variety of distributions, and arbitrary dependency structures of lagged responses of any order. We formally demonstrate how DMPM facilitates causal inference within the structural causal modeling framework and we take a Bayesian approach for the estimation of the posterior distributions of the model parameters and causal effects of interest. We demonstrate the use of DMPM by applying the approach to both real and synthetic data.

Last updated on 2024-26-11 at 16:44