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Player Vectors: Characterizing Soccer Players' Playing Style from Match Event Streams

机译:球员向量:从比赛事件流中表征足球运动员的比赛风格

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IVansfer fees for soccer players are at an all-time high. To make the most of their budget, soccer clubs need to understand the type of players they have and the type of players that are on the market. Current insights in the playing style of players are mostly based on the opinions of human soccer experts such as trainers and scouts. Unfortunately, their opinions are inherently subjective and thus prone to faults. In this paper, we characterize the playing style of a player in a more rigorous, objective and data-driven manner. We characterize the playing style of a player using a so-called 'player vector' that can be interpreted both by human experts and machine learning systems. We demonstrate the validity of our approach by retrieving player identities from anonymized event stream data and present a number of use cases related to scouting and monitoring player development in top European competitions.
机译:足球运动员的IVansfer费用创历史新高。为了充分利用预算,足球俱乐部需要了解他们拥有的球员类型和市场上的球员类型。当前对运动员打球风格的见解主要基于诸如教练员和球探之类的人类足球专家的观点。不幸的是,他们的意见本质上是主观的,因此容易出错。在本文中,我们以更加严格,客观和数据驱动的方式来刻画玩家的游戏风格。我们使用人类专家和机器学习系统都可以解释的所谓“玩家向量”来表征玩家的游戏风格。我们通过从匿名事件流数据中检索球员身份来证明我们方法的有效性,并提出了许多与欧洲顶级比赛中的球探和监测球员发展有关的用例。

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