Dermot Sheridan, Aidan J Brady, Dongyun Nie, Mark Roantree
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引用次数: 0
摘要
本研究旨在比较三种机器学习模型中绝对和相对外部负荷指数(ELI)的预测准确性,并利用 ELI、个人特征、健康评分和训练工作量预测盖尔精英足球运动员的感知用力值(RPE)。在三个赛季的比赛中,我们收集了 49 名盖尔精英足球运动员的 ELI 和相关变量,共得出 1617 个观测值。ELI包括总距离、高速奔跑距离(≥ 4.72 m - s-1)、加速和减速次数(n ± 3 m - s-2),以绝对值和相对值表示。此外,还包括与个人特征、健康评分和训练工作量有关的变量。数据采用决策树、随机森林(RF)和自引导聚合(BS)模型进行分析。仅使用绝对和相对 ELI,RF 模型的预测准确率最高,分别为 54.3% 和 48.3%。在 RF 模型中,总距离和相对距离是 RPE 的最强预测因子,分别占归一化重要性的 38.8% 和 27.9%。BS 模型与相关变量结合使用时,绝对 ELI 和相对 ELI 的准确率最高,分别为 67.0% 和 65.2%。当前的模型显示了预测 RPE 以及随后优化盖尔足球训练负荷的潜力。
Predictive analysis of ratings of perceived exertion in elite Gaelic football.
This study aimed to compare the predictive accuracy of absolute and relative external load indices (ELI) across three machine learning models, and predict the rating of perceived exertion (RPE) of elite Gaelic football players using ELI, personal characteristics, wellness scores, and training workloads. ELI and related variables were collected from 49 elite Gaelic football players over three competitive seasons resulting in 1617 observations. ELI included total distance, high speed running distance (≥ 4.72 m · s-1), and number of accelerations and decelerations (n ± 3 m · s-2), expressed in both absolute and relative terms. Variables related to personal characteristics, wellness scores, and training workloads were also included. Data were analysed using decision tree, random forest (RF), and bootstrap aggregation (BS) models. The RF model had the highest predictive accuracy using absolute and relative ELI only, at 54.3% and 48.3%, respectively. Total and relative distance were the strongest predictors of RPE in the RF model, accounting for 38.8% and 27.9% of the normalised importance. The BS model had the highest accuracy at 67.0% and 65.2% for absolute and relative ELI when performed in conjunction with the related variables, respectively. The current models demonstrate potential to predict RPE and subsequently optimise training load in Gaelic football.
期刊介绍:
Biology of Sport is the official journal of the Institute of Sport in Warsaw, Poland, published since 1984.
Biology of Sport is an international scientific peer-reviewed journal, published quarterly in both paper and electronic format. The journal publishes articles concerning basic and applied sciences in sport: sports and exercise physiology, sports immunology and medicine, sports genetics, training and testing, pharmacology, as well as in other biological aspects related to sport. Priority is given to inter-disciplinary papers.