Player Activity and Load Profiling with Hidden Markov Models: A Novel Application in Rugby League.

Neil Watson, Sharief Hendricks, Dan Weaving, Nicholas Dalton-Barron, Ben Jones, Theodor Stewart, Ian Durbach
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Abstract

Player movement in rugby league is complex, being spatiotemporal and multifaceted. Modeling this complexity to provide robust measures of player activity and load has proved difficult, with important aspects of player movement yet to be considered. These include the influence of time-varying covariates on player activity and the combination of different dimensions of player movement. Few studies have simultaneously categorized player activity into different activity states and investigated factors influencing the transition between states, or compared player activity and load profiles between matches and training. This study applied hidden Markov models (HMMs)-a data-driven, multivariate approach-to rugby league training and match GPS data to i) demonstrate how HMMs can combine multiple variables in a data-driven way to effectively categorize player movement states, ii) investigate the influence of two time-varying covariates, score difference and elapsed match time on player activity states, and iii) compare player activity and load profiles within and between training and match modalities. HMMs were fitted to player GPS, accelerometer and heart rate data of one English Super League team across 60 training sessions and 35 matches. Distinct activity states were detected for both matches and training, with transitions between states in matches influenced by score difference and elapsed time and clear differences in activity and load profiles between training and matches. HMMs can model the complexity of player movement to effectively profile player activity and load in rugby league and have the potential to facilitate new research across several sports.

利用隐马尔可夫模型进行球员活动和负荷分析:橄榄球联赛中的新应用
橄榄球联赛中球员的运动非常复杂,具有时空性和多面性。对这种复杂性进行建模,以提供可靠的球员活动和负荷测量方法已被证明是困难的,球员运动的重要方面尚待考虑。其中包括时变协变量对球员活动的影响以及球员运动不同维度的组合。很少有研究同时将球员的活动归类为不同的活动状态,并调查状态之间转换的影响因素,或比较球员在比赛和训练之间的活动和负荷情况。本研究将隐马尔可夫模型(HMMs)--一种数据驱动的多变量方法--应用于橄榄球联赛的训练和比赛 GPS 数据,目的是 i) 展示 HMMs 如何以数据驱动的方式将多个变量结合起来,从而有效地对球员的运动状态进行分类;ii) 研究两个时变协变量(比分差距和已用比赛时间)对球员活动状态的影响;iii) 比较训练和比赛模式内部和之间的球员活动和负荷概况。对一支英格兰超级联赛球队在 60 节训练课和 35 场比赛中的球员 GPS、加速计和心率数据拟合了 HMM。在比赛和训练中都检测到了不同的活动状态,比赛中不同状态之间的转换受比分差距和所用时间的影响,训练和比赛之间的活动和负荷曲线存在明显差异。HMM 可以对球员运动的复杂性进行建模,从而有效描述橄榄球联赛中球员的活动和负荷情况,并有可能促进多项运动的新研究。
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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