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Predicting Soccer Highlights from Spatio-Temporal Match Event Streams

机译:预测Spatio-Temporal Match事件流中的足球亮点

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Sports broadcasters are continuously seeking to make their live coverages of soccer matches more attractive. A recent innovation is the "highlight channel," which shows the most interesting events from multiple matches played at the same time. However, switching between matches at the right time is challenging in fast-paced sports like soccer, where interesting situations often evolve as quickly as they disappear again. This paper presents the POGBA algorithm for automatically predicting highlights in soccer matches, which is an important task that has not yet been addressed. POGBA leverages spatio-temporal event streams collected during matches to predict the probability that a particular game state will lead to a goal. An empirical evaluation on a real-world dataset shows that POGBA outperforms the baseline algorithms in terms of both precision and recall.
机译:体育广播公司不断寻求让他们的现场覆盖足球比赛更具吸引力。最近的创新是“突出显示渠道”,它显示了同时播放的多匹配比赛中最有趣的事件。然而,在适当的时间之间的比赛之间的切换是在快节奏的运动中充满挑战,如足球,在那里有趣的情况经常像再次消失一样快速发展。本文介绍了用于自动预测足球比赛中亮点的Pogba算法,这是尚未解决的重要任务。 Pogba利用了在比赛期间收集的时空事件流来预测特定游戏状态将导致目标的概率。关于真实数据数据集的实证评估显示,Pogba在精度和召回方面占基线算法。

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