Distilling Realizable Students from Unrealizable Teachers
Kim, Yujin, Chin, Nathaniel, Vasudev, Arnav, Choudhury, Sanjiban
–arXiv.org Artificial Intelligence
-- We study policy distillation under privileged information, where a student policy with only partial observations must learn from a teacher with full-state access. A key challenge is information asymmetry: the student cannot directly access the teacher's state space, leading to distributional shifts and policy degradation. Existing approaches either modify the teacher to produce realizable but sub-optimal demonstrations or rely on the student to explore missing information independently, both of which are inefficient. Our key insight is that the student should strategically interact with the teacher --querying only when necessary and resetting from recovery states --to stay on a recoverable path within its own observation space. We introduce two methods: (i) an imitation learning approach that adaptively determines when the student should query the teacher for corrections, and (ii) a reinforcement learning approach that selects where to initialize training for efficient exploration. The project website is available here. Robots operating in the real world must learn to act effectively despite partial observations and limited ability to explore. Unlike in simulation, where policies have access to privileged state information, real-world policies must make decisions based on incomplete inputs [1]-[3].
arXiv.org Artificial Intelligence
May-15-2025
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