Behavioral Player Rating in Competitive Online Shooter Games
- URL: http://arxiv.org/abs/2207.00528v1
- Date: Fri, 1 Jul 2022 16:23:01 GMT
- Title: Behavioral Player Rating in Competitive Online Shooter Games
- Authors: Arman Dehpanah, Muheeb Faizan Ghori, Jonathan Gemmell, Bamshad
Mobasher
- Abstract summary: In this paper, we engineer several features from in-game statistics to model players and create ratings that accurately represent their behavior and true performance level.
Our results show that the behavioral ratings present more accurate performance estimations while maintaining the interpretability of the created representations.
Considering different aspects of the playing behavior of players and using behavioral ratings for matchmaking can lead to match-ups that are more aligned with players' goals and interests.
- Score: 3.203973145772361
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Competitive online games use rating systems for matchmaking;
progression-based algorithms that estimate the skill level of players with
interpretable ratings in terms of the outcome of the games they played.
However, the overall experience of players is shaped by factors beyond the sole
outcome of their games. In this paper, we engineer several features from
in-game statistics to model players and create ratings that accurately
represent their behavior and true performance level. We then compare the
estimating power of our behavioral ratings against ratings created with three
mainstream rating systems by predicting rank of players in four popular game
modes from the competitive shooter genre. Our results show that the behavioral
ratings present more accurate performance estimations while maintaining the
interpretability of the created representations. Considering different aspects
of the playing behavior of players and using behavioral ratings for matchmaking
can lead to match-ups that are more aligned with players' goals and interests,
consequently resulting in a more enjoyable gaming experience.
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