Off-Policy Deep Reinforcement Learning without Exploration
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Abstract
Many practical applications of reinforcement learning constrain agents to learn from a fixed batch of data which has already been gathered, without offering further possibility for data collection. In this paper, we demonstrate that due to errors introduced by extrapolation, standard off-policy deep reinforcement learning algorithms, such as DQN and DDPG, are incapable of learning with data uncorrelated to the distribution under the current policy, making them ineffective for this fixed batch setting. We introduce a novel class of off-policy algorithms, batch-constrained reinforcement learning, which restricts the action space in order to force the agent towards behaving close to on-policy with respect to a…
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Topics
Keywords
- Reinforcement learning
- Computer science
- Artificial intelligence
- Extrapolation
- Class (philosophy)
- Reinforcement
- Machine learning
- Mathematics
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