Guo Tianxiao, Cui Yixiong, Min Weifan, Zhang Wenjie, Mi Jing, Shen Yanfei
School of Competitive Sports, Beijing Sport University, Beijing, PRC.
School of Sports Engineering, Beijing Sport University, Beijing, PRC.
J Sports Sci. 2022 Dec;40(24):2704-2713. doi: 10.1080/02640414.2023.2189216. Epub 2023 Mar 9.
The aim of this exploratory study is (1) to determine the relationship between substitution network (Sub-N) parameters and teams' standings and (2) to find out the key individual performance indicators that differentiated substitution groups of players, and explore the association between players' percentages and team's standing within the obtained substitution groups. A total of 574,214 substitution events during the last 10 NBA seasons were analysed to construct Sub-N for each team observation. Three different player groups were obtained after clustering their playing time, clustering coefficient and vulnerability. Team's clustering coefficient, standard deviation of vulnerability and out-degree centrality of starters exhibited moderate to strong correlations with team's standing during playoffs ( = 0.54-0.76). The regression models showed that defensive win share (beta = 0.54-0.67), turnovers (-0.15 to -0.25) and assists (0.12-0.26) were predictive for all players' net ratings, and the role players who scored more points presented higher net ratings (0.34). Finally, players from top-playoff teams exhibited lower absolute value of vulnerabilities ( = 0.80). The findings demonstrate the feasibility of Sub-N for exploring the association between rotation and competitive performance, and provide quantitative reference for coaching staff to optimize substitution structures and rosters.
(1)确定替代网络(Sub-N)参数与球队排名之间的关系;(2)找出区分球员替代组的关键个人绩效指标,并探讨在获得的替代组内球员百分比与球队排名之间的关联。分析了过去10个NBA赛季中的574,214次替代事件,为每个球队观察结果构建Sub-N。根据球员的上场时间、聚类系数和脆弱性进行聚类后,得到了三个不同的球员组。球队的聚类系数、脆弱性标准差和先发球员的出度中心性与季后赛期间球队排名呈现出中度到强的相关性(=0.54-0.76)。回归模型表明,防守胜利贡献值(β=0.54-0.67)、失误(-0.15至-0.25)和助攻(0.12-0.26)对所有球员的净评级具有预测性,得分较多的角色球员呈现出更高的净评级(0.34)。最后,来自顶级季后赛球队的球员表现出较低的脆弱性绝对值(=0.80)。研究结果证明了Sub-N在探索轮换与竞技表现之间关联方面的可行性,并为教练人员优化替代结构和球员名单提供了定量参考。