Towards optimized actions in critical situations of soccer games with deep reinforcement learning

Pegah Rahimian, Afshin Oroojlooy, László Toka
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引用次数: 1

Abstract

Soccer is a sparse rewarding game: any smart or careless action in critical situations can change the result of the match. Therefore players, coaches, and scouts are all curious about the best action to be performed in critical situations, such as the times with a high probability of losing ball possession or scoring a goal. This work proposes a new state representation for the soccer game and a batch reinforcement learning to train a smart policy network. This network gets the contextual information of the situation and proposes the optimal action to maximize the expected goal for the team. We performed extensive numerical experiments on the soccer logs made by InStat for 104 European soccer matches. The results show that in all 104 games, the optimized policy obtains higher rewards than its counterpart in the behavior policy. Besides, our framework learns policies that are close to the expected behavior in the real world. For instance, in the optimized policy, we observe that some actions such as foul, or ball out can be sometimes more rewarding than a shot in specific situations.
基于深度强化学习的足球比赛关键情况下的优化动作研究
足球是一种缺乏奖励的游戏:在关键时刻,任何聪明或粗心的动作都可能改变比赛的结果。因此,球员、教练和球探都很好奇,在危急情况下,比如在很有可能丢球或进球的时候,应该采取什么最佳行动。本文提出了一种新的足球比赛状态表示方法和一种批量强化学习方法来训练智能策略网络。该网络获取情境的上下文信息,并提出最佳行动,以最大化团队的预期目标。我们对104场欧洲足球比赛的InStat足球日志进行了广泛的数值实验。结果表明,在所有104个博弈中,优化后的策略获得的奖励都高于对应的行为策略。此外,我们的框架学习接近现实世界中预期行为的策略。例如,在优化策略中,我们观察到某些行为(如犯规或出界)在特定情况下有时比射门更有回报。
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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