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Policy Distillation
[article]
2016
arXiv
pre-print
Policies for complex visual tasks have been successfully learned with deep reinforcement learning, using an approach called deep Q-networks (DQN), but relatively large (task-specific) networks and extensive training are needed to achieve good performance. In this work, we present a novel method called policy distillation that can be used to extract the policy of a reinforcement learning agent and train a new network that performs at the expert level while being dramatically smaller and more
arXiv:1511.06295v2
fatcat:2jnp5mpncjhato6p53yqeva2ma