利用球探报告文本预测NCAA→NBA的表现

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Philip Z. Maymin
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引用次数: 1

摘要

美国职业篮球协会(NBA)球队的选秀决策是出了名的糟糕。分析可以提供帮助,但往往被认为过于适应、复杂、有风险和不完整。为了解决这些问题,我们为2006年至2019年的每个大学NBA前景训练了单独的“留一”随机森林机器学习模型,并在一个新的综合数据集上使用保守效用函数,包括球探报告的原始文本、组合测量、场上统计、模拟选秀位置等。尽管无法挑选高中或国际球员,但最终的模型比除了一支NBA球队之外的所有球队的实际决策都要好,平均收益为1亿美元。目标洗牌表明模型没有过拟合,特征洗牌表明惯用手性和ESPN模拟选秀评分最重要,而不是其他模拟选秀。NBA球队可能会因为没有遵循纪律、模型驱动、规范的分析方法来做决策而失去价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Scouting Reports Text To Predict NCAA → NBA Performance
ABSTRACT Draft decisions by National Basketball Association (NBA) teams are notoriously poor. Analytics can help but are often dismissed for being too overfit, complex, risky, and incomplete. To address these concerns, we train separate leave-one-out random forests machine learning models for each collegiate NBA prospect from 2006 through 2019 with a conservative utility function on a novel comprehensive dataset including the raw text of scouting reports, combine measurements, on-court stats, mock draft placements, and more. Despite being unable to draft high school or international players, the resulting model outperforms the actual decisions of all but one NBA team, with an average gain of $100 million. Target shuffling shows that the model does not overfit and feature shuffling shows that handedness and ESPN mock draft rating, but not other mock drafts, are most important. NBA teams may be missing value by not following a disciplined, model-driven, prescriptive analytics approach to decision making.
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来源期刊
Journal of Business Analytics
Journal of Business Analytics Business, Management and Accounting-Management Information Systems
CiteScore
2.50
自引率
0.00%
发文量
13
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