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On modeling player fitness in training for team sports with application to professional rugby

机译:论团队体育训练中运动员健身的模型及其在职业橄榄球中的应用

摘要

It is increasingly important for professional sports teams to monitor player fitness in order to optimize performance. Models have been put forward linking fitness in training to performance in competition but rely on regular measurements of player fitness. As formal tests for measuring player fitness are typically time-consuming and inconvenient, measurements are taken infrequently. As such, it may be challenging to accurately predict performance in competition as player fitness is unknown. Alternatively, other data, such as how the players are feeling, may be measured more regularly. This data, however, may be biased as players may answer the questions differently and these differences may dominate the data. Linear Mixed Methods and Support Vector Machines were used to estimate player fitness from available covariates at times when explicit measures of fitness are unavailable. Using data provided by a professional rugby club, a case study was used to illustrate the application and value of these models. Both models performed well with R^2 values ranging from 60% to 85%, demonstrating that the models largely captured the biases introduced by individual players.
机译:对于专业运动队来说,监视运动员的身体状况以优化性能变得越来越重要。已经提出了将训练中的适应性与比赛中的表现联系起来的模型,但是这些模型依赖于球员适应性的定期测量。由于用于测量球员体能的正式测试通常很耗时且不方便,因此很少进行测量。这样,由于运动员的健康状况未知,准确预测比赛表现可能具有挑战性。或者,可以更规则地测量其他数据,例如玩家的感受。但是,由于玩家回答问题的方式可能不同,因此这些数据可能会产生偏差,并且这些差异可能会主导数据。线性混合方法和支持向量机用于在尚无明确的健身指标时根据可用的协变量估算球员的健身水平。使用专业橄榄球俱乐部提供的数据,通过案例研究来说明这些模型的应用和价值。两种模型的R ^ 2值均在60%至85%的范围内,表现良好,表明模型在很大程度上捕捉了个体参与者引入的偏差。

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