Can Learned Optimization Make Reinforcement Learning Less Difficult? 12 Chris Lu
–Neural Information Processing Systems
While reinforcement learning (RL) holds great potential for decision making in the real world, it suffers from a number of unique difficulties which often need specific consideration. In particular: it is highly non-stationary; suffers from high degrees of plasticity loss; and requires exploration to prevent premature convergence to local optima and maximize return. In this paper, we consider whether learned optimization can help overcome these problems.
Neural Information Processing Systems
May-28-2025, 09:44:03 GMT
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