Agent-Based Adaptive Level Generation for Dynamic Difficulty Adjustment in Angry Birds

7 Feb 2019 Matthew Stephenson Jochen Renz

This paper presents an adaptive level generation algorithm for the physics-based puzzle game Angry Birds. The proposed algorithm is based on a pre-existing level generator for this game, but where the difficulty of the generated levels can be adjusted based on the player's performance... (read more)

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