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通过整合数据挖掘方法构建的美国职业篮球联赛混合篮球比赛结果预测模型

Hybrid Basketball Game Outcome Prediction Model by Integrating Data Mining Methods for the National Basketball Association.

作者信息

Chen Wei-Jen, Jhou Mao-Jhen, Lee Tian-Shyug, Lu Chi-Jie

机构信息

Graduate Institute of Business Administration, Fu Jen Catholic University, New Taipei City 242062, Taiwan.

Artificial Intelligence Development Center, Fu Jen Catholic University, New Taipei City 242062, Taiwan.

出版信息

Entropy (Basel). 2021 Apr 17;23(4):477. doi: 10.3390/e23040477.

Abstract

The sports market has grown rapidly over the last several decades. Sports outcomes prediction is an attractive sports analytic challenge as it provides useful information for operations in the sports market. In this study, a hybrid basketball game outcomes prediction scheme is developed for predicting the final score of the National Basketball Association (NBA) games by integrating five data mining techniques, including extreme learning machine, multivariate adaptive regression splines, k-nearest neighbors, eXtreme gradient boosting (XGBoost), and stochastic gradient boosting. Designed features are generated by merging different game-lags information from fundamental basketball statistics and used in the proposed scheme. This study collected data from all the games of the NBA 2018-2019 seasons. There are 30 teams in the NBA and each team play 82 games per season. A total of 2460 NBA game data points were collected. Empirical results illustrated that the proposed hybrid basketball game prediction scheme achieves high prediction performance and identifies suitable game-lag information and relevant game features (statistics). Our findings suggested that a two-stage XGBoost model using four pieces of game-lags information achieves the best prediction performance among all competing models. The six designed features, including averaged defensive rebounds, averaged two-point field goal percentage, averaged free throw percentage, averaged offensive rebounds, averaged assists, and averaged three-point field goal attempts, from four game-lags have a greater effect on the prediction of final scores of NBA games than other game-lags. The findings of this study provide relevant insights and guidance for other team or individual sports outcomes prediction research.

摘要

在过去几十年里,体育市场迅速发展。体育赛事结果预测是一项具有吸引力的体育分析挑战,因为它为体育市场运营提供了有用信息。在本研究中,开发了一种混合篮球比赛结果预测方案,通过整合包括极限学习机、多元自适应回归样条、k近邻、极端梯度提升(XGBoost)和随机梯度提升在内的五种数据挖掘技术,来预测美国职业篮球联赛(NBA)比赛的最终比分。通过合并来自基础篮球统计数据的不同比赛滞后信息生成设计特征,并将其用于所提出的方案中。本研究收集了2018 - 2019赛季NBA所有比赛的数据。NBA有30支球队,每支球队每个赛季打82场比赛。总共收集了2460个NBA比赛数据点。实证结果表明,所提出的混合篮球比赛预测方案具有很高的预测性能,并识别出合适的比赛滞后信息和相关比赛特征(统计数据)。我们的研究结果表明,使用四条比赛滞后信息的两阶段XGBoost模型在所有竞争模型中实现了最佳预测性能。来自四个比赛滞后的六个设计特征,包括平均防守篮板、平均两分球命中率、平均罚球命中率、平均进攻篮板、平均助攻和平均三分球出手次数,对NBA比赛最终比分的预测比其他比赛滞后有更大影响。本研究结果为其他团队或个人体育赛事结果预测研究提供了相关见解和指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/052d/8073849/5196f2c7a13b/entropy-23-00477-g001.jpg

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