For How Long Should We Be Punching? Learning Action Duration in Fighting Games
Quick Take
The study explores adaptive action durations in RL agents for fighting games to enhance responsiveness.
Key Points
- Agents learn both action and duration for better adaptability.
- High frame skip values improve learning of exploitative strategies.
- Performance matches fixed frame skips but lacks robustness.
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