Cameron Shaun, Radwan Ibrahim, Mara Jocelyn
University of Canberra.
Res Q Exerc Sport. 2025 Mar;96(1):116-125. doi: 10.1080/02701367.2024.2373124. Epub 2024 Jul 15.
This study addresses the lack of objective player-based metrics in men's rugby league by introducing a comprehensive set of novel performance metrics designed to quantify a player's overall contribution to team success. Player match performance data were captured by Stats Perform for every National Rugby League season from 2018 until 2022; a total of five seasons. The dataset was divided into offensive and defensive variables and further split according to player position. Five machine learning algorithms (Principal Component Regression, Lasso Regression, Random Forest, Regression Tree, and Extreme Gradient Boost) were considered in the analysis, which ultimately generated Wins Created and Losses Created for offensive and defensive performance, respectively. These two metrics were combined to create a final metric of Net Wins Added. The validity of these player performance metrics against traditional objective and subjective measures of performance in rugby league were evaluated. The metrics correctly predicted the winner of 80.9% of matches, as well as predicting the number of team wins per season with an RMSE of 1.9. The metrics displayed moderate agreement (Gwet AC1 = 0.505) when predicting team of the year award recipients. When predicting State of Origin selection, the metrics displayed moderate agreement for New South Wales (0.450) and substantial agreement for Queensland (0.652). The development and validation of these objective player performance metrics represent significant potential to enhance talent evaluation and player recruitment.
本研究通过引入一套全面的新颖表现指标来解决男子橄榄球联盟中缺乏基于球员的客观指标的问题,这些指标旨在量化球员对球队成功的整体贡献。Stats Perform收集了2018年至2022年每个国家橄榄球联盟赛季的球员比赛表现数据,共五个赛季。数据集被分为进攻和防守变量,并根据球员位置进一步细分。分析中考虑了五种机器学习算法(主成分回归、套索回归、随机森林、回归树和极端梯度提升),最终分别生成了进攻和防守表现的创造胜场数和创造负场数。这两个指标相结合,创建了一个净胜场增加的最终指标。评估了这些球员表现指标相对于橄榄球联盟传统客观和主观表现衡量标准的有效性。这些指标正确预测了80.9%比赛的获胜者,同时以1.9的均方根误差预测了每个赛季球队的获胜场次。在预测年度最佳球队获奖者时,这些指标显示出中等程度的一致性(Gwet AC1 = 0.505)。在预测州际系列赛入选球员时,这些指标对新南威尔士州显示出中等程度的一致性(0.450),对昆士兰州显示出高度一致性(0.652)。这些客观球员表现指标的开发和验证在提升人才评估和球员招募方面具有巨大潜力。