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Dynamic graphical models: Theory, structure and counterfactual forecasting

Authors :
West, Mike
Vrotsos, Luke
Publication Year :
2024

Abstract

Simultaneous graphical dynamic linear models (SGDLMs) provide advances in flexibility, parsimony and scalability of multivariate time series analysis, with proven utility in forecasting. Core theoretical aspects of such models are developed, including new results linking dynamic graphical and latent factor models. Methodological developments extend existing Bayesian sequential analyses for model marginal likelihood evaluation and counterfactual forecasting. The latter, involving new Bayesian computational developments for missing data in SGDLMs, is motivated by causal applications. A detailed example illustrating the models and new methodology concerns global macroeconomic time series with complex, time-varying cross-series relationships and primary interests in potential causal effects.<br />Comment: 22 pages and 9 figures (main paper); 16 pages and 6 figures (appendices and supplementary material)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.06125
Document Type :
Working Paper