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  • 1. Pillai, Nishant
    et al.
    Giaconia, Roberto
    Enhancing video game experience with playtime training and tailoring of virtual opponents: Using Deep Q-Network based Reinforcement Learning on a Multi-Agent Environment2023Independent thesis Advanced level (degree of Master (Two Years)), 20 credits / 30 HE creditsStudent thesis
    Abstract [en]

    When interacting with fictional environments, the users' sense of immersion can be broken when characters act in mechanical and predictable ways. The vast majority of AIs for such fictional characters, that control their actions, are statically scripted, and expert players can learn strategies that take advantage of this to easily win challenges that were intended to be hard. Games can also be too hard or too easy for certain players. Through the means of Reinforcement Learning, we propose a method to train adversaries in a simple environment for a game of tag from the PettingZoo library, exploring the possibility of such modern AIs to learn during the game. Our work aims towards a new concept of continuously learning AIs in video games, giving a framework to greatly increase adaptability of products to their users, and replayability of the challenges offered in them. We found that our solution allows the agents to learn during the game, but that more work should be done to achieve a model that tailors the behavior to the specific player. Nonetheless, this is an exploratory step towards more research on this new concept, which could have numerous applications in many genres of video games. 

    Download full text (pdf)
    Play time training and tailoring of video game opponents with Reinforcement Learning
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