Analysis of the popular expected goals (xG) metric in soccer has determined that a (slightly) smaller number of high-quality attempts will likely yield more goals than a slew of low-quality ones. This observation has driven a change in shooting behavior. Teams are passing up on shots from outside the penalty box, in the hopes of generating a better shot closer to goal later on. This paper evaluates whether this decrease in long-distance shots is warranted. Therefore, we propose a novel generic framework to reason about decision-making in soccer by combining techniques from machine learning and artificial intelligence (AI). First, we model how a team has behaved offensively over the course of two seasons by learning a Markov Decision Process (MDP) from event stream data. Second, we use reasoning techniques arising from the AI literature on verification to each team's MDP. This allows us to reason about the efficacy of certain potential decisions by posing counterfactual questions to the MDP. Our key conclusion is that teams would score more goals if they shot more often from outside the penalty box in a small number of team-specific locations. The proposed framework can easily be extended and applied to analyze other aspects of the game.
翻译:对足球中流行的预期目标(xG)指标的分析确定,(略微)数量较少的高质量尝试可能会比一系列低质量的尝试产生更多的目标。这一观察促使射击行为发生变化。球队在罚球箱外投球,希望以后更接近目标。本文评估长距离射击的减少是否合理。因此,我们提出一个新的通用框架,通过结合机器学习和人工智能技术来解释足球决策。首先,我们用事件流数据学习Markov决策过程(MDP),来模拟一个团队在两个赛季中的行为,其表现是令人不快的。第二,我们使用从AI关于核查的文献中产生的推理技术,向每个球队的MDP进行推理。这使我们可以解释某些潜在决定的效力,向MDP提出反事实问题。我们的主要结论是,如果团队在少数小组特定地点的罚球箱外更经常射击,那么他们就会得更多目标。提议的框架可以很容易扩展,用来分析游戏的其他方面。