Mind the Gap: Promises and Pitfalls of Hierarchical Planning in LeWorldModel
Abstract
We investigate whether temporal hierarchy can improve LeWorldModel on long-horizon goal-conditioned control.
We introduce Hi-LeWM, an extension that freezes the pretrained low-level LeWM and adds high-level planning over latent subgoals.
We evaluate Hi-LeWM on PushT and Cube across increasing goal offsets.
Hierarchy does not automatically improve performance: at short horizons, the best configuration uses a one-step high-level horizon, while longer horizons reveal a mismatch between the learned high-level action space and the inference-time search distribution.
Experiments with true future latent subgoals show that the frozen low-level controller can execute well-aligned intermediate targets, indicating that high-level subgoal generation is the main bottleneck.
Unconstrained search can select latent macro-actions that appear favorable under the learned model but produce poor control targets.
Constraining search around macro-actions encoded from training trajectories, with appropriate subgoal execution timing, recovers useful hierarchical regimes, improving over flat LeWM by +11.3 percentage points at medium-range horizons and +14.7 percentage points at the longest PushT horizon.
Overall, temporal abstraction can benefit compact frozen LeWM, but only when high-level search remains compatible with the low-level controller
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