Learning to Plan Hierarchically from Curriculum

June 18, 2019 Β· Declared Dead Β· πŸ› IEEE Robotics and Automation Letters

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Authors Philippe Morere, Lionel Ott, Fabio Ramos arXiv ID 1906.07371 Category cs.AI: Artificial Intelligence Cross-listed cs.LG, cs.RO Citations 8 Venue IEEE Robotics and Automation Letters Last Checked 4 months ago
Abstract
We present a framework for learning to plan hierarchically in domains with unknown dynamics. We enhance planning performance by exploiting problem structure in several ways: (i) We simplify the search over plans by leveraging knowledge of skill objectives, (ii) Shorter plans are generated by enforcing aggressively hierarchical planning, (iii) We learn transition dynamics with sparse local models for better generalisation. Our framework decomposes transition dynamics into skill effects and success conditions, which allows fast planning by reasoning on effects, while learning conditions from interactions with the world. We propose a simple method for learning new abstract skills, using successful trajectories stemming from completing the goals of a curriculum. Learned skills are then refined to leverage other abstract skills and enhance subsequent planning. We show that both conditions and abstract skills can be learned simultaneously while planning, even in stochastic domains. Our method is validated in experiments of increasing complexity, with up to 2^100 states, showing superior planning to classic non-hierarchical planners or reinforcement learning methods. Applicability to real-world problems is demonstrated in a simulation-to-real transfer experiment on a robotic manipulator.
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