Despite having the potential to provide significant insights into tactical preparations for future matches, very few studies have considered the spatial trends of team attacking possessions in rugby league. Those which have considered these trends have used grid based aggregation methods, which provide a discrete understanding of rugby league match play but may fail to provide a complete understanding of the spatial trends of attacking possessions due to the dynamic nature of the sport. In this study, we use Kernel Density Estimation (KDE) to provide a continuous understanding of the spatial trends of attacking possessions in rugby league on a team by team basis. We use the Wasserstein distance to understand the differences between teams (i.e. using all of each team's data) and within teams (i.e. using a single team's data against different opponents). Our results show that KDEs are able to provide interesting tactical insights at the between team level. Furthermore, at the within team level, the results are able to show patterns of spatial trends for attacking teams, which are present against some opponents but not others. The results could help sports practitioners to understand opposition teams' previous performances and prepare tactical strategies for matches against them.
翻译:尽管有可能对今后比赛的战术准备情况提供重要的见解,但很少的研究考虑了橄榄球联盟中攻击财产的团队空间趋势。那些考虑到这些趋势的研究使用了基于网格的汇总方法,这些方法对橄榄球联盟比赛的比赛提供了不完全的了解,但可能无法完全了解由于运动的动态性质而攻击财产的空间趋势。在本研究中,我们使用内核密度估计法(KDE)来持续了解以小组为基础攻击橄榄球联盟中攻击财产的空间趋势。我们利用瓦塞尔斯坦距离来了解小组(即利用每个小组的所有数据)和小组内部(即使用一个小组对不同对手的数据)之间的差异。我们的结果显示, KDE能够在团队一级提供有趣的战术见解。此外,在团队一级,结果能够显示攻击队的空间趋势模式,这些是针对某些对手的,而不是其他对手的。这些结果有助于体育从业人员了解反对派小组以往的表现,并制订战略来对付他们。