应用无监督机器学习模型识别女子排球发球性能相关指标。

IF 1.4 4区 教育学 Q3 HOSPITALITY, LEISURE, SPORT & TOURISM
Miguel Á Casimiro-Artés, Raúl Hileno, Antonio Garcia-de-Alcaraz
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引用次数: 0

摘要

在排球运动中,通常使用逻辑回归或判别分析等传统统计技术分析不同因素对发球成绩的影响。目的:在本研究中,应用了无监督机器学习中使用的两个主要模型(聚类分析和主成分分析)来实现这些目标:(a) 根据发球系数、年龄、身高和球队排名对球员进行分组,(b) 确定在整个女子排球赛季中,哪些与发球(类型和性能)、球员(角色、年龄和身高)和球队(排名、比赛地点和对手质量)相关的变量最能解释数据的总方差。研究方法分析了 2017-2018 赛季西班牙女排甲级联赛(Liga Iberdrola)132 场比赛中的 20936 次发球。变量涉及发球动作(发球类型和表现)、球员特征(球员角色、年龄和身高)和球队特征(最终排名、比赛地点、对手质量和赛事)。结果显示聚类分析显示,五组球员在年龄、发球系数、球队排名和身高方面存在差异。主成分分析表明,前五个成分解释了 72.12% 的总方差。在这些成分中,发球系数、球队排名、比赛地点、对手质量和球员角色各占 10%以上。结论这些发现有助于教练员根据比赛需求改进人才选拔和球员培养。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Unsupervised Machine Learning Models to Identify Serve Performance Related Indicators in Women's Volleyball.

In volleyball, the effect of different factors on serve performance has usually been analyzed with traditional statistical techniques such as logistic regression or discriminant analysis. Purpose: In this study, two of the main models used in unsupervised machine learning (cluster and principal component analysis) were applied to achieve these objectives: (a) to create groups of players considering their serve coefficient, age, height, and team ranking, and (b) to identify which variables related to the serve (type and performance), the players (role, age, and height), and the teams (ranking, match location, and quality of opposition) most explained the total variance of the data during an entire women's volleyball season. Method: A total of 20,936 serves were analyzed during the 132 matches played in the 2017-2018 season in the Liga Iberdrola (women Spanish first division). The variables were related to the serving action (type of serve and performance), the players' traits (player role, age, and height), and the teams' characteristics (final ranking, match location, quality of opposition, and tournament). Results: Cluster analysis showed five groups of players differing in age, serve coefficient, team ranking, and height. Principal component analysis showed how the first five components explained 72.12% of the total variance. From these components, serve coefficient, team ranking, match location, quality of opposition, and player role each contributed more than 10%. Conclusions: These findings can help coaches to improve talent selection and players' development according to competition demands.

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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
125
审稿时长
6-12 weeks
期刊介绍: Research Quarterly for Exercise and Sport publishes research in the art and science of human movement that contributes significantly to the knowledge base of the field as new information, reviews, substantiation or contradiction of previous findings, development of theory, or as application of new or improved techniques. The goals of RQES are to provide a scholarly outlet for knowledge that: (a) contributes to the study of human movement, particularly its cross-disciplinary and interdisciplinary nature; (b) impacts theory and practice regarding human movement; (c) stimulates research about human movement; and (d) provides theoretical reviews and tutorials related to the study of human movement. The editorial board, associate editors, and external reviewers assist the editor-in-chief. Qualified reviewers in the appropriate subdisciplines review manuscripts deemed suitable. Authors are usually advised of the decision on their papers within 75–90 days.
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