Capturing the playing style of professional soccer coaches is a complex, and yet barely explored, task in sports analytics. Nowadays, the availability of digital data describing every relevant spatio-temporal aspect of soccer matches, allows for capturing and analyzing the playing style of players, teams, and coaches in an automatic way. In this paper, we present coach2vec, a workflow to capture the playing style of professional coaches using match event streams and artificial intelligence. Coach2vec extracts ball possessions from each match, clusters them based on their similarity, and reconstructs the typical ball possessions of coaches. Then, it uses an autoencoder, a type of artificial neural network, to obtain a concise representation (encoding) of the playing style of each coach. Our experiments, conducted on soccer-logs describing the last four seasons of the Italian first division, reveal interesting similarities between prominent coaches, paving the road to the simulation of playing styles and the quantitative comparison of professional coaches.
翻译:掌握专业足球教练的游戏风格是一个复杂的、但几乎无法探索的体育分析任务。 如今,掌握数字数据可以描述足球比赛的每个相关时空方面,从而可以自动地捕捉和分析运动员、球队和教练的游戏风格。 在本文中,我们展示了教练2vec,这是一个利用比赛活动流和人工智能来捕捉专业教练的游戏风格的工作流程。教练2vec从每场比赛中提取球物,根据它们的相似性加以分组,并重建教练的典型球物。 然后,它使用自动编码器,即一种人造神经网络,以获得每个教练的游戏风格的简明描述(编码 ) 。 我们在描述意大利第一师队过去四个赛季的足球记录上进行的实验揭示了著名教练之间的有趣的相似之处,为模拟比赛风格和专业教练的数量比较铺平了道路。