A framework combining universal value function approximators with targeted training scenarios and data augmentation produces RL agents that adapt to user-specified styles in real time across video games and humanoid domains while preserving core task performance.
Hearts, clubs, diamonds, spades: Players who suit MUDs.Journal of MUD research1, 19 (1996)
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Coachable agents for interactive gameplay
A framework combining universal value function approximators with targeted training scenarios and data augmentation produces RL agents that adapt to user-specified styles in real time across video games and humanoid domains while preserving core task performance.