Ibáñez Sergio J, Courel-Ibáñez Javier, Contreras-García José Miguel, Piñar-López María Isabel
Faculty of Sport Sciences, Training Optimization and Sports Performance Research Group (GOERD), University of Extremadura, Cáceres, Spain.
Department of Physical Education and Sports, Faculty of Education and Sport Sciences, University of Granada, Melilla, Spain.
PLoS One. 2025 Sep 3;20(9):e0330726. doi: 10.1371/journal.pone.0330726. eCollection 2025.
The analysis of box-score performance indicators has traditionally been used to classify player roles in women's basketball based on the five conventional positions: point guard, shooting guard, small forward, power forward, and center. However, this framework may not reflect the current tactical and functional demands of the game. The aim of this study was to identify and redefine functional player roles in professional women's basketball using performance data derived from actual competition. A total of 36,204 individual player records from 3,894 games in the Spanish Liga Femenina Endesa (2012-2022) were analyzed. Game-related statistics were normalized by effective playing time and scaled to a 40-minute format. One-way ANOVA revealed significant differences across traditional positions, but also indicated considerable functional overlap. Unsupervised learning techniques, including k-means and Gaussian mixture models, were applied to identify underlying performance-based player profiles. The analysis yielded nine stable and interpretable functional roles, offering a more nuanced classification than the traditional five-position model. These roles capture offensive, defensive, and hybrid specializations, providing coaches and analysts with a practical framework for tactical planning, scouting, and individualized player development. The findings support a shift toward data-driven classification systems that better reflect the functional realities of modern elite women's basketball.
传统上,对篮球比赛数据统计表现指标的分析一直用于根据控球后卫、得分后卫、小前锋、大前锋和中锋这五个传统位置对女子篮球运动员的角色进行分类。然而,这个框架可能无法反映当前比赛的战术和功能需求。本研究的目的是利用实际比赛中的表现数据,识别并重新定义职业女子篮球中球员的功能角色。对西班牙女子篮球甲级联赛恩德萨(2012 - 2022年)3894场比赛中的36204条球员个人记录进行了分析。与比赛相关的统计数据按有效上场时间进行了标准化处理,并换算成40分钟的比赛形式。单因素方差分析揭示了传统位置之间存在显著差异,但也表明存在相当大的功能重叠。采用包括k均值和高斯混合模型在内的无监督学习技术来识别基于表现的潜在球员类型。分析得出了九个稳定且可解释的功能角色,比传统的五位置模型提供了更细致入微的分类。这些角色涵盖了进攻、防守和混合型专长,为教练和分析师提供了一个用于战术规划、球探工作和球员个性化发展的实用框架。研究结果支持向数据驱动的分类系统转变,这种系统能更好地反映现代精英女子篮球的功能实际情况。