寻找NBA季后赛和总冠军球队的共同特征:一种机器学习方法

I. S. Kohli
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引用次数: 0

摘要

在本文中,我们采用机器学习技术分析了来自每支球队的15个赛季的NBA常规赛数据,以确定NBA季后赛球队的共同特征。每支球队都有44个预测变量和一个二元响应变量,如果球队进入季后赛,则值为“TRUE”,如果球队错过季后赛,则值为“FALSE”。对该问题拟合初始分类树后,对该树进行剪枝,降低了测试错误率。除此之外,我们还建立了一个由分类树组成的随机森林,它提供了一个非常精确的模型,从中生成了一个变量重要性图,以确定哪些预测变量对响应变量的影响最大。这项工作的结果是得出这样的结论:衡量一支球队是否有资格进入季后赛的最重要因素是对手的投篮命中率和对手的场均得分。这似乎表明,防守因素而不是进攻因素是NBA季后赛球队最重要的共同特征。
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Finding Common Characteristics Among NBA Playoff and Championship Teams: A Machine Learning Approach
In this paper, we employ machine learning techniques to analyze fifteen seasons of NBA regular season data from every team to determine the common characteristics among NBA playoff teams. Each team was characterized by 44 predictor variables and one binary response variable taking on a value of "TRUE" if a team had made the playoffs, and value of "FALSE" if a team had missed the playoffs. After fitting an initial classification tree to this problem, this tree was then pruned which decrease the test error rate. Further to this, a random forest of classification trees was grown which provided a very accurate model from which a variable importance plot was generated to determine which predictor variables had the greatest influence on the response variable. The result of this work was the conclusion that the most important factors in characterizing a team’s playoff eligibility are the opponent field goal percentage and the opponent points per game. This seems to suggest that defensive factors as opposed to offensive factors are the most important characteristics shared among NBA playoff teams.
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