Although basketball is a dynamic process sport, with 5 plus 5 players competing on both offense and defense simultaneously, learning some static information is predominant for professional players, coaches and team mangers. In order to have a deep understanding of field goal attempts among different players, we propose a zero inflated Poisson model with clustered regression coefficients to learn the shooting habits of different players over the court and the heterogeneity among them. Specifically, the zero inflated model recovers the large proportion of the court with zero field goal attempts, and the mixture of finite mixtures model learn the heterogeneity among different players based on clustered regression coefficients and inflated probabilities. Both theoretical and empirical justification through simulation studies validate our proposed method. We apply our proposed model to the National Basketball Association (NBA), for learning players' shooting habits and heterogeneity among different players over the 2017--2018 regular season. This illustrates our model as a way of providing insights from different aspects.
翻译:虽然篮球是一种动态过程运动,5+5球手同时在进攻和防御上竞争,但了解一些静态信息对于专业球员、教练和团队操纵者来说是占主导地位的。为了深入了解不同球员的实地目标尝试,我们提议采用零膨胀的普瓦森模型,其中含有组合回归系数,以学习不同球员在法院的射击习惯和他们之间的异质。具体地说,零膨胀模型恢复了法院的大部分比例,没有尝试实地目标,而有限混合物模型的混合体则根据组合回归系数和膨胀概率学习不同球员之间的异质。通过模拟研究,理论和经验上的理由证实了我们提出的方法。我们向全国篮球协会(NBA)应用了我们提议的模型,用于学习球员在2017-2018年常规赛季的射击习惯和不同球员之间的异质性。这说明了我们的模式,作为从不同方面提供见解的一种方法。