量化表现与足球成功之间的关系

L. Pappalardo, Paolo Cintia
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引用次数: 47

摘要

如今,关于体育活动的大量数据的可用性为量化表现与成功之间的关系提供了机会。在这项研究中,我们分析了6个欧洲联赛的6000多场比赛和1000万场比赛,并调查了足球比赛中的这种关系。我们发现,一支球队在比赛最终排名中的位置与其典型表现显著相关,正如从足球数据中提取的一组技术特征所描述的那样。此外,我们发现,虽然胜利和失败可以用球队在比赛中的表现来解释,但很难通过使用机器学习方法来检测平局。然后,我们只依靠技术数据模拟每个联赛整个赛季的结果,即排除进球,利用过去赛季数据训练的机器学习模型。模拟生成的球队排名(PC排名)与实际排名接近,表明复杂系统对足球的看法有可能揭示有关表现和成功之间关系的隐藏模式。
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Quantifying the relation between performance and success in soccer
The availability of massive data about sports activities offers nowadays the opportunity to quantify the relation between performance and success. In this study, we analyze more than 6,000 games and 10 million events in six European leagues and investigate this relation in soccer competitions. We discover that a team's position in a competition's final ranking is significantly related to its typical performance, as described by a set of technical features extracted from the soccer data. Moreover we find that, while victory and defeats can be explained by the team's performance during a game, it is difficult to detect draws by using a machine learning approach. We then simulate the outcomes of an entire season of each league only relying on technical data, i.e. excluding the goals scored, exploiting a machine learning model trained on data from past seasons. The simulation produces a team ranking (the PC ranking) which is close to the actual ranking, suggesting that a complex systems' view on soccer has the potential of revealing hidden patterns regarding the relation between performance and success.
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