In this paper, we present a novel approach for optimising long-term tactical and strategic decision-making in football (soccer) by encapsulating events in a league environment across a given time frame. We model the teams' objectives for a season and track how these evolve as games unfold to give a fluent objective that can aid in decision-making games. We develop Markov chain Monte Carlo and deep learning-based algorithms that make use of the fluent objectives in order to learn from prior games and other games in the environment and increase the teams' long-term performance. Simulations of our approach using real-world datasets from 760 matches shows that by using optimised tactics with our fluent objective and prior games, we can on average increase teams mean expected finishing distribution in the league by up to 35.6%.
翻译:在本文中,我们展示了一种新颖的方法,通过在特定时间框架内在联盟环境中包罗各种事件,优化足球(足球)的长期战术和战略决策。我们模拟了球队的赛季目标,并跟踪这些球队如何随着游戏的展开而演化,以给出一个有助于决策游戏的流利目标。我们开发了Markov连锁链Monte Carlo和深层次的基于学习的算法,利用流利目标学习以往的比赛和其他环境游戏,提高球队的长期性能。我们使用760场比赛中真实世界数据集的模拟方法显示,通过使用精准战术和我们流利目标和先前的比赛,我们平均可以增加球队意味着预期球队的分布将达到35.6%。