基于比赛数据的篮球阵容管理的扩展正则化调整正负分析

IF 1.9 3区 工程技术 Q3 MANAGEMENT
Luca Grassetti;Ruggero Bellio;Luca Di Gaspero;Giovanni Fonseca;Paolo Vidoni
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引用次数: 5

摘要

在这项工作中,我们分析了篮球比赛的数据,以评估不同球队采用的五人阵容的效率。从调整后的正负框架出发,我们提出了一种基于模型的部分匹配结果分析策略,从两个主要方向扩展了现有文献。第一个扩展将经典的响应变量(得分点)替换为综合得分,该得分结合了一组框得分统计数据。这使得游戏的各个方面得以分离。第二个扩展侧重于整个阵容,而不是个别球员,使用合适的扩展模型规范。模型拟合过程是贝叶斯的,并提供了必要的正则化。这种方法的一个优点是使用后验分布对球员和阵容进行排名,为球队经理提供了一个有效的工具。为了进行实证分析,我们使用了2018/2019赛季土耳其航空欧洲联赛锦标赛的常规赛,其中包括240场比赛的详细比赛和数据,这些数据都是在联赛网站上提供的。模型拟合的结果可用于若干调查,例如,对单个参与者的影响进行比较分析,以及对阵容监测的总效应和协同效应进行估计。此外,球员和阵容在赛季中的行为,在每个比赛日之后更新估计结果,可以代表一个相当有用的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extended regularized adjusted plus-minus analysis for lineup management in basketball using play-by-play data
In this work we analyse basketball play-by-play data in order to evaluate the efficiency of different five-man lineups employed by teams. Starting from the adjusted plus-minus framework, we present a model-based strategy for the analysis of the result of partial match outcomes, extending the current literature in two main directions. The first extension replaces the classical response variable (scored points) with a comprehensive score that combines a set of box score statistics. This allows various aspects of the game to be separated. The second extension focuses on entire lineups rather than individual players, using a suitable extended model specification. The model fitting procedure is Bayesian and provides the necessary regularization. An advantage of this approach is the use of posterior distributions to rank players and lineups, providing an effective tool for team managers. For the empirical analysis, we use the 2018/2019 regular season of the Turkish Airlines Euroleague Championship, with play-by-play and box scores for 240 matches, which are made available by the league website. The results of the model fitting can be used for several investigations as, for instance, the comparative analysis of the effects of single players and the estimation of total and synergic effects of lineups monitoring. Moreover, the behaviour of players and lineups during the season, updating the estimation results after each gameday, can represent a rather useful tool.
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来源期刊
IMA Journal of Management Mathematics
IMA Journal of Management Mathematics OPERATIONS RESEARCH & MANAGEMENT SCIENCE-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
4.70
自引率
17.60%
发文量
15
审稿时长
>12 weeks
期刊介绍: The mission of this quarterly journal is to publish mathematical research of the highest quality, impact and relevance that can be directly utilised or have demonstrable potential to be employed by managers in profit, not-for-profit, third party and governmental/public organisations to improve their practices. Thus the research must be quantitative and of the highest quality if it is to be published in the journal. Furthermore, the outcome of the research must be ultimately useful for managers. The journal also publishes novel meta-analyses of the literature, reviews of the "state-of-the art" in a manner that provides new insight, and genuine applications of mathematics to real-world problems in the form of case studies. The journal welcomes papers dealing with topics in Operational Research and Management Science, Operations Management, Decision Sciences, Transportation Science, Marketing Science, Analytics, and Financial and Risk Modelling.
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