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ExoPredicator: Learning Abstract Models of Dynamic Worlds for Robot Planning

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Long-horizon embodied planning is challenging because the world does not only change through an agent's actions: exogenous processes (e.g., water heating, dominoes cascading) unfold concurrently with the agent's actions. We propose a framework for abstract world models that jointly learns (i) symbolic state representations and (ii) causal processes for both endogenous actions and exogenous mechanisms. Each causal process models the time course of a stochastic cause-effect relation. We learn these world models from limited data via variational Bayesian inference combined with LLM proposals. Across five simulated tabletop robotics environments, the learned models enable fast planning that generalizes to held-out tasks with more objects and more complex goals, outperforming a range of baselines.

Yichao Liang, Dat Nguyen, Cambridge Yang, Tianyang Li, Joshua B. Tenenbaum, Carl Edward Rasmussen, Adrian Weller, Zenna Tavares, Tom Silver, Kevin Ellis• 2025

Related benchmarks

TaskDatasetResultRank
Robotic PlanningGrow
Success Rate93.3
3
Robotic PlanningDomino
Success Rate98.7
3
Robotic PlanningCoffee
Success Rate99.3
3
Robotic PlanningBoil
Success Rate92.7
3
Robotic PlanningFan
Success Rate97.3
3
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