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Examination of National Basketball Association (NBA) team values based on dynamic linear mixed models

机译:基于动态线性混合模型的国家篮球协会(NBA)团队价值观

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In the last decade, NBA has grown into a billion-dollar industry where technology and advanced game plans play an essential role. Investors are interested in research examining the factors that can affect the team value. The aim of this research is to investigate the factors that affect the NBA team values. The value of a team can be influenced not only by performance-based variables, but also by macroeconomic indicators and demographic statistics. Data, analyzed in this study, contains of game statistics, economic variables and demographic statistics of the 30 teams in the NBA for the 2013–2020 seasons. Firstly, Pearson correlation test was implemented in order to identify the related variables. NBA teams’ characteristics and similarities were assessed with Machine Learning techniques (K-means and Hierarchical clustering). Secondly, Ordinary linear regression (OLS), fixed effect and random effect models were implemented in the statistical analyses. The models were compared based on Akaike Information Criterion (AIC). Fixed effect model with one lag was found the most effective model and our model produced consistently good results with the R 2 statistics of 0.974. In the final model, we found that the significant determinants of team value at the NBA team level are revenue, GDP, championship, population and key player. In contrast, the total number of turnovers has a negative impact on team value. These findings would be beneficial to coaches and managers to improve their strategies to increase their teams’ value.
机译:在过去的十年中,NBA已经成长为十亿美元的行业,技术和先进的游戏计划发挥重要作用。投资者对研究可能影响团队价值的因素有兴趣。该研究的目的是调查影响NBA团队价值的因素。团队的价值不仅可以受到基于性能的变量的影响,而且可以受到宏观经济指标和人口统计的影响。在本研究中分析的数据,在2013-2020赛季的NBA中包含30支队伍的游戏统计数据,经济变量和人口统计。首先,实施Pearson相关试验以识别相关变量。利用机器学习技术(K-Meansic和分层聚类)评估NBA团队的特征和相似性。其次,在统计分析中实施了普通的线性回归(OLS),固定效果和随机效果模型。基于Akaike信息标准(AIC)进行比较模型。有一个滞后的固定效果模型得到了最有效的模型,我们的模型产生了一贯的效果,R 2统计0.974。在最终模型中,我们发现NBA团队级别的团队价值的重要决定因素是收入,GDP,冠军,人口和关键球员。相比之下,转发的总数对团队价值产生负面影响。这些调查结果将有利于教练和经理,以提高他们增加其团队价值的战略。

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