Perspectives on data analytics for gaining a competitive advantage in football: computational approaches to tactics.

IF 3.5
Sigrid Olthof, Jesse Davis
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Abstract

The role of data-driven analyses is becoming more prominent in football. These have the potential to impact decision-making processes for team performance and player recruitment. Research in this area makes use of large datasets consisting of event and tracking data from multiple teams, leagues and seasons. A well-known computational solution is the Expected Goal model for post-match analysis and operational decision-making.Despite a shared research interest in football tactics, computational research in football is somewhat disconnected from the sports science community. We believe that there is much to gain from a closer collaboration between these disparate communities. To this end, the present commentary has three goals. First, we want to synthesize the historical computational work in areas such as evaluating tactics, predicting player and team success, and modeling players' movements. This work has largely been published in technical computational venues, and hence we hope to provide an access point for those interested in learning about this area. Second, we will highlight some emerging topics, such as automating parts of match analysis and analyzing decision-making. These are topics that require an in-depth collaboration with domain experts and therefore would benefit from a tighter integration among these communities. Third, we would like to discuss some advice and initiatives that we hope will be helpful in strengthening the ties between these communities.

在足球中获得竞争优势的数据分析观点:战术的计算方法。
数据驱动分析在足球比赛中的作用越来越突出。这些都有可能影响球队表现和球员招募的决策过程。这一领域的研究利用了由来自多个球队、联赛和赛季的事件和跟踪数据组成的大型数据集。一个众所周知的计算解决方案是用于赛后分析和操作决策的预期目标模型。尽管对足球战术有共同的研究兴趣,但足球的计算研究与体育科学界有些脱节。我们相信,在这些不同的社区之间开展更密切的合作,将大有裨益。为此,本评论有三个目标。首先,我们希望在评估战术、预测球员和球队的成功以及为球员的动作建模等领域综合历史计算工作。这项工作主要发表在技术计算场所,因此我们希望为那些有兴趣了解这一领域的人提供一个访问点。其次,我们将重点介绍一些新兴的主题,如自动化部分比赛分析和分析决策。这些主题需要与领域专家进行深入的协作,因此将受益于这些社区之间更紧密的集成。第三,我们想讨论一些建议和倡议,我们希望这些建议和倡议有助于加强这些社区之间的联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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