朝着最大化足球预期控球结果的方向发展

Pegah Rahimian, Jan Van Haaren, László Toka
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引用次数: 1

摘要

足球运动员需要在比赛中做出许多决定,以最大限度地提高球队获胜的机会。不幸的是,由于足球的低分、复杂性和高度动态性,这些决定很难衡量和评估。本文提出了一个端到端的深度强化学习框架,该框架接收比赛中每种情况的原始跟踪数据,并在球场的整个表面上产生最佳的球目的地位置。利用所提出的方法,足球运动员和教练能够分析其历史比赛中的实际行为,获得最佳行为并为未来比赛制定计划,并在比赛部署之前评估最佳决策的结果。简而言之,我们的优化模型的结果表明,在控球的各个阶段,更多的短传(Tiki-Taka打法),以及更高的近距离射门倾向(即进攻阶段的射门)。这样的修改将使典型球队的控球率提高0.025。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards maximizing expected possession outcome in soccer
Soccer players need to make many decisions throughout a match in order to maximize their team’s chances of winning. Unfortunately, these decisions are challenging to measure and evaluate due to the low-scoring, complex, and highly dynamic nature of soccer. This article proposes an end-to-end deep reinforcement learning framework that receives raw tracking data for each situation in a game, and yields optimal ball destination location on the full surface of the pitch. Using the proposed approach, soccer players and coaches are able to analyze the actual behavior in their historical games, obtain the optimal behavior and plan for future games, and evaluate the outcome of the optimal decisions prior to deployment in a match. Concisely, the results of our optimization model propose more short passes (Tiki-Taka playing style) in all phases of a ball possession, and higher propensity of low distance shots (i.e. shots in attack phase). Such a modification will let the typical teams to increase their likelihood of possession ending in a goal by 0.025.
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