AI RESEARCH

Learning Local Constraints for Reinforcement-Learned Content Generators

arXiv CS.AI

ArXi:2605.13570v1 Announce Type: new Constraint-based game content generators that learn local constraints from existing content, such as Wave Function Collapse (WFC), can generate visually satisfying game levels but face challenges in guaranteeing global properties, such as playability. On the other hand, reinforcement-learning trained generators can guarantee global properties -- because such properties can easily be included in reward functions -- but the results can be visually dissatisfying. In this paper, we explore ways to combine these methods.