Disentangling Transfer in Continual Reinforcement Learning Maciej Wołczyk Faculty of Mathematics and Computer Science
–Neural Information Processing Systems
We adopt SAC as the underlying RL algorithm and Continual World as a suite of continuous control tasks. We systematically study how different components of SAC (the actor and the critic, exploration, and data) affect transfer efficacy, and we provide recommendations regarding various modeling options.
Neural Information Processing Systems
Nov-13-2025, 18:00:24 GMT
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