Energy-Based Transfer for Reinforcement Learning
Deng, Zeyun, Ghosh, Jasorsi, Xie, Fiona, Lu, Yuzhe, Sycara, Katia, Campbell, Joseph
–arXiv.org Artificial Intelligence
Reinforcement learning algorithms often suffer from poor sample efficiency, making them challenging to apply in multi-task or continual learning settings. Efficiency can be improved by transferring knowledge from a previously trained teacher policy to guide exploration in new but related tasks. However, if the new task sufficiently differs from the teacher's training task, the transferred guidance may be sub-optimal and bias exploration toward low-reward behaviors. We propose an energy-based transfer learning method that uses out-of-distribution detection to selectively issue guidance, enabling the teacher to intervene only in states within its training distribution. We theoretically show that energy scores reflect the teacher's state-visitation density and empirically demonstrate improved sample efficiency and performance across both single-task and multi-task settings.
arXiv.org Artificial Intelligence
Jun-23-2025
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