Game changers: An objective assessment of players' contribution to team success in women's rugby league.

IF 2.3 2区 医学 Q2 SPORT SCIENCES
Shaun Cameron, Ibrahim Radwan, Jocelyn Mara
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引用次数: 0

Abstract

This study introduces new performance metrics to address the lack of objective player evaluations in women's rugby league. Using data from six seasons (2018-2023) of the Women's National Rugby League (NRLW), five machine learning algorithms generated two key metrics: "Wins Created" for offensive performance and "Losses Created" for defensive performance. These were adjusted by a situational importance modifier based on player positions and combined into a final metric called "Net Wins Added". An Elo rating variant modified to suit a rugby league context was also created to provide a strength of opponent multiplier for player performance. The validity of these metrics against traditional objective and subjective performance measures in rugby league were evaluated. The metrics predicted seasonal team wins with a Root Mean Squared Error (RMSE) of 0.9 and Player of the Year top 10 leaderboard points with an RMSE of 8.2. The metrics displayed substantial agreement (Gwet AC1 = 0.82) when predicting experts' Team of the Year award recipients and substantial agreement (Gwet AC1 = 0.75) when predicting players' Team of the Year awards. Developing and validating these objective player performance metrics provide women's rugby league with a unique system to enhance talent evaluation and player recruitment.

本研究引入了新的性能指标,以解决女子橄榄球联赛中缺乏客观球员评价的问题。利用全国女子橄榄球联赛(NRLW)六个赛季(2018-2023 年)的数据,五种机器学习算法生成了两个关键指标:针对进攻表现的 "创造的胜利 "和针对防守表现的 "创造的损失"。这些指标根据球员的位置通过情景重要性修正器进行调整,最后合并成一个名为 "净胜分 "的指标。此外,还创建了一个经过修改的 Elo 评级变体,以适应橄榄球联盟的环境,为球员表现提供对手实力乘数。对照橄榄球联赛中传统的客观和主观表现衡量标准,对这些衡量标准的有效性进行了评估。这些指标预测赛季球队获胜的均方根误差(RMSE)为 0.9,预测年度最佳球员排行榜前 10 名的均方根误差为 8.2。这些指标在预测专家的年度最佳阵容获奖者时显示出很大的一致性(Gwet AC1 = 0.82),在预测球员的年度最佳阵容获奖者时显示出很大的一致性(Gwet AC1 = 0.75)。开发和验证这些客观的球员表现指标为女子橄榄球联盟提供了一个独特的系统,以加强人才评估和球员招募。
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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来源期刊
Journal of Sports Sciences
Journal of Sports Sciences 社会科学-运动科学
CiteScore
6.30
自引率
2.90%
发文量
147
审稿时长
12 months
期刊介绍: The Journal of Sports Sciences has an international reputation for publishing articles of a high standard and is both Medline and Clarivate Analytics-listed. It publishes research on various aspects of the sports and exercise sciences, including anatomy, biochemistry, biomechanics, performance analysis, physiology, psychology, sports medicine and health, as well as coaching and talent identification, kinanthropometry and other interdisciplinary perspectives. The emphasis of the Journal is on the human sciences, broadly defined and applied to sport and exercise. Besides experimental work in human responses to exercise, the subjects covered will include human responses to technologies such as the design of sports equipment and playing facilities, research in training, selection, performance prediction or modification, and stress reduction or manifestation. Manuscripts considered for publication include those dealing with original investigations of exercise, validation of technological innovations in sport or comprehensive reviews of topics relevant to the scientific study of sport.
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