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Predicting the Popularity of Games on Steam

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arxiv 2110.02896 v1 pith:SKFBRZ2K submitted 2021-10-06 cs.LG

Predicting the Popularity of Games on Steam

classification cs.LG
keywords gamessteamgamepopularityapproachreleasedvideodiscover
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The video game industry has seen rapid growth over the last decade. Thousands of video games are released and played by millions of people every year, creating a large community of players. Steam is a leading gaming platform and social networking site, which allows its users to purchase and store games. A by-product of Steam is a large database of information about games, players, and gaming behavior. In this paper, we take recent video games released on Steam and aim to discover the relation between game popularity and a game's features that can be acquired through Steam. We approach this task by predicting the popularity of Steam games in the early stages after their release and we use a Bayesian approach to understand the influence of a game's price, size, supported languages, release date, and genres on its player count. We implement several models and discover that a genre-based hierarchical approach achieves the best performance. We further analyze the model and interpret its coefficients, which indicate that games released at the beginning of the month and games of certain genres correlate with game popularity.

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