Mixed-Initiative Level Design with RL Brush

EvoMUSART(2021)

引用 17|浏览51
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摘要
This paper introduces RL Brush, a level-editing tool for tile-based games designed for mixed-initiative co-creation. The tool uses reinforcement-learning-based models to augment manual human level-design through the addition of AI-generated suggestions. Here, we apply RL Brush to designing levels for the classic puzzle game Sokoban. We put the tool online and tested it with 39 different sessions. The results show that users using the AI suggestions stay around longer and their created levels on average are more playable and more complex than without.
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关键词
Mixed initiative tools, Reinforcement learning, Procedural content generation
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