2021
DOI: 10.1007/978-3-030-71704-9_9
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The Evaluation of Rating Systems in Online Free-for-All Games

Abstract: Online competitive games have become increasingly popular. To ensure an exciting and competitive environment, these games routinely attempt to match players with similar skill levels. Matching players is often accomplished through a rating system. There has been an increasing amount of research on developing such rating systems. However, less attention has been given to the evaluation metrics of these systems. In this paper, we present an exhaustive analysis of six metrics for evaluating rating systems in onli… Show more

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Cited by 3 publications
(1 citation statement)
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“…The rationale for assigning these weights corresponds to the result that not all the players in the team contribute equally to the outcome of the game. Dehpanah et al [10] discovered that solely considering the rating of the most skilled player in the team provides a better prediction of the outcome of the game than taking the mean across all players' ratings in the team. Meanwhile, the study suggests the worst player in the team also affects the overall performance of the team significantly, hence this paper adapts to take all players into account where the most skilled player and least skilled player have larger weight factors.…”
Section: Skill-based Aggregated Team Rating (Sbatr)mentioning
confidence: 99%
“…The rationale for assigning these weights corresponds to the result that not all the players in the team contribute equally to the outcome of the game. Dehpanah et al [10] discovered that solely considering the rating of the most skilled player in the team provides a better prediction of the outcome of the game than taking the mean across all players' ratings in the team. Meanwhile, the study suggests the worst player in the team also affects the overall performance of the team significantly, hence this paper adapts to take all players into account where the most skilled player and least skilled player have larger weight factors.…”
Section: Skill-based Aggregated Team Rating (Sbatr)mentioning
confidence: 99%