DiPRL trains nearly discrete programmatic policies in RL by adding architecture entropy regularization to gradient-based optimization, avoiding performance collapse from post-hoc discretization.
Neurosymbolic reinforcement learning and planning: A survey.IEEE Transactions on Artificial Intelligence, 5(5):1939–1953, 2023
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DiPRL: Learning Discrete Programmatic Policies via Architecture Entropy Regularization
DiPRL trains nearly discrete programmatic policies in RL by adding architecture entropy regularization to gradient-based optimization, avoiding performance collapse from post-hoc discretization.