IPCGRL: Language-Instructed Reinforcement Learning for Procedural Level Generation

Baek, In-Chang, Kim, Sung-Hyun, Lee, Seo-Young, Kim, Dong-Hyeun, Kim, Kyung-Joong

arXiv.org Artificial Intelligence 

Abstract--Recent research has highlighted the significance of natural language in enhancing the controllability of generative models. While various efforts have been made to leverage natural language for content generation, research on deep reinforcement learning (DRL) agents utilizing text-based instructions for procedural content generation remains limited. In this paper, we propose IPCGRL, an instruction-based procedural content generation method via reinforcement learning, which incorporates a sentence embedding model. We evaluate IPCGRL in a two-dimensional level generation task and compare its performance with a generalpurpose embedding method. The results indicate that IPCGRL achieves up to a 21.4% improvement in controllability and a 17.2% improvement in generalizability for unseen instructions. Furthermore, the proposed method extends the modality of conditional input, enabling a more flexible and expressive interaction framework for procedural content generation.

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