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arxiv: 2308.13538 · v1 · pith:67PIOU6Hnew · submitted 2023-08-16 · 💻 cs.IR · cs.AI· cs.CL

A Preliminary Study on a Conceptual Game Feature Generation and Recommendation System

classification 💻 cs.IR cs.AIcs.CL
keywords gamemodelfeaturesgamessuggestionssystemconceptualfeature
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This paper introduces a system used to generate game feature suggestions based on a text prompt. Trained on the game descriptions of almost 60k games, it uses the word embeddings of a small GLoVe model to extract features and entities found in thematically similar games which are then passed through a generator model to generate new features for a user's prompt. We perform a short user study comparing the features generated from a fine-tuned GPT-2 model, a model using the ConceptNet, and human-authored game features. Although human suggestions won the overall majority of votes, the GPT-2 model outperformed the human suggestions in certain games. This system is part of a larger game design assistant tool that is able to collaborate with users at a conceptual level.

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