一个估算nba球员工资投资回报的新框架

Jackson P. Lautier
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引用次数: 0

摘要

美国国家篮球协会(NBA)规定了球员的工资上限。因此,根据球员在球场上的表现,开发工具来衡量球员工资的相对实现回报是有用的。然而,这样的研究很少存在。因此,我们提出了第一个已知的框架来估计NBA球员合同的投资回报率(ROI)。该框架分为五个部分:(1)决定衡量时间范围,如标准的82场比赛的ba常规赛;(2)计算我们提出的新颖的比赛贡献百分比(GCP)指标,这是一个单场比赛汇总统计数据,对每个参赛球队求和为单位,由每场NBA统计数据组成,包括传统,打法,拼抢,禁区,防守,跟踪和篮板;(3)使用标准货币转换计算估算NBA常规赛每场比赛的单场价值(SGV);(4)将SGV乘以已实现gcp向量,得到一系列已实现的每个球员单赛季现金流;(5)使用球员工资作为初始投资来执行传统的roi计算。我们通过编制一个新颖的、可共享的数据集来说明我们的框架,该数据集包括2022-2023赛季NBA常规赛的每场GCP数据和工资。这里呈现了所有玩家(包括前50名和后50名)的薪酬ROI散点图。值得注意的是,错过的游戏被视为默认值,因为GCP是每个游戏的指标。这允许在经常缺席比赛的高水平球员和很少缺席比赛的普通球员之间进行收支平衡计算,我们通过安东尼戴维斯和布鲁克洛佩兹在2023年NBA常规赛的比较来证明这一点。最后,我们建议使用我们的框架,通过定制讨论其灵活性,并概述未来可能的改进。
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A New Framework to Estimate Return on Investment for Player Salaries in the National Basketball Association
The National Basketball Association (NBA) imposes a player salary cap. It is therefore useful to develop tools to measure the relative realized return of a player's salary given their on court performance. Very few such studies exist, however. We thus present the first known framework to estimate a return on investment (ROI) for NBA player contracts. The framework operates in five parts: (1) decide on a measurement time horizon, such as the standard 82-game NBA regular season; (2) calculate the novel game contribution percentage (GCP) measure we propose, which is a single game summary statistic that sums to unity for each competing team and is comprised of traditional, playtype, hustle, box outs, defensive, tracking, and rebounding per game NBA statistics; (3) estimate the single game value (SGV) of each regular season NBA game using a standard currency conversion calculation; (4) multiply the SGV by the vector of realized GCPs to obtain a series of realized per-player single season cash flows; and (5) use the player salary as an initial investment to perform the traditional ROI calculation. We illustrate our framework by compiling a novel, sharable dataset of per game GCP statistics and salaries for the 2022-2023 NBA regular season. A scatter plot of ROI by salary for all players is presented, including the top and bottom 50 performers. Notably, missed games are treated as defaults because GCP is a per game metric. This allows for break-even calculations between high-performing players with frequent missed games and average performers with few missed games, which we demonstrate with a comparison of the 2023 NBA regular seasons of Anthony Davis and Brook Lopez. We conclude by suggesting uses of our framework, discussing its flexibility through customization, and outlining potential future improvements.
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