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Sports analytics for professional speed skating

机译:专业速度滑冰运动分析

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AbstractIn elite sports, training schedules are becoming increasingly complex, and a large number of parameters of such schedules need to be tuned to the specific physique of a given athlete. In this paper, we describe how extensive analysis of historical data can help optimise these parameters, and how possible pitfalls of under- and overtraining in the past can be avoided in future schedules. We treat the series of exercises an athlete undergoes as a discrete sequence of attributed events, that can be aggregated in various ways, to capture the many ways in which an athlete can prepare for an important test event. We report on a cooperation with the elite speed skating team LottoNL-Jumbo, who have recorded detailed training data over the last 15?years. The aim of the project was to analyse this potential source of knowledge, and extract actionable and interpretable patterns that can provide input to future improvements in training. We present two alternative techniques to aggregate sequences of exercises into a combined, long-term training effect, one of which based on a sliding window, and one based on a physiological model of how the body responds to exercise. Next, we use both linear modelling and Subgroup Discovery to extract meaningful models of the data.
机译:<标题>抽象 ara id =“par1”>在精英体育中,培训计划变得越来越复杂,并且需要调整这些时间表的大量参数到给定运动员的特定体质。在本文中,我们描述了对历史数据的广泛分析有助于优化这些参数,以及在未来的时间表中可以避免过去和过度训练的缺陷程度。我们对待运动员经历的一系列练习作为一种离散的归属事件序列,可以以各种方式汇总,以捕捉运动员可以为重要测试事件做好准备的许多方式。我们报告了与精英速滑团队Lottonl-Jumbo的合作,他们在过去的15年里录得详细的培训数据?多年。该项目的目的是分析这种潜在的知识来源,并提取可行和可解释的模式,可以为未来的培训提供投入。我们提出了两种替代技术,将练习序列聚集成组合,长期训练效果,其中一个基于滑动窗口,并且基于身体如何应对运动的生理模型。接下来,我们使用线性建模和子组发现来提取数据的有意义的模型。

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