Reinforcement Schedules
Associative Learning
Real-World Application of Classical Conditioning
Conservation of Declining Populations
Statically Indeterminate Problem Solving
Generalization, Discrimination, and Extinction
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This study introduces adaptive conservative level in Q-learning (ACL-QL) for offline reinforcement learning. ACL-QL fine-tunes conservatism for each transition, improving policy performance over existing methods.
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