DSGE as a Structured World Model:Benchmarking Counterfactual Generalization in Economic Worlds
Abstract
Modern world models -- Dreamer, transformer world models (IRIS, Genie), and JEPA / next-latent architectures -- learn dynamics from observed trajectories but share a weakness: their transition map is disciplined only where data were seen, so it degrades under policy-induced distribution shift and on counterfactual states off the training path.
We argue that a Dynamic Stochastic General Equilibrium (DSGE) model is a structured world model: its state is a belief state -- the very object a latent world model learns, but supplied with causal structure and hard cross-equation constraints.
We introduce DSGE-Gym, a benchmark of eight DSGE environments with off-path counterfactual test sets, scaling to the ECB's 230-variable New Area-Wide Model.
We find that (i)learned world models match the dynamics on-path but collapse off-path (5{\sigma} tail RMSE up to \sim 40 the on-path level), and (ii)training the same architectures on data the DSGE generates across rare and counterfactual-policy states -- coverage only a structural model can synthesize -- roughly halves tail error and cuts policy-regime error 10--280 where the counterfactual rule shifts the ergodic support.
Because such coverage cannot be sampled from any single history, this measures structure's ability to manufacture the missing distribution.
DSGE-Gym and all code are released as a reproducible testbed for counterfactual generalization.
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