Sports Prediction and Betting Models in the Machine Learning Age: The Case of Tennis

S. Wilkens
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引用次数: 15

Abstract

Machine learning and its numerous variants have meanwhile become established tools in many areas of society. Several attempts have been made to apply machine learning to the prediction of the outcome of professional sports events and to exploit “inefficiencies” in the corresponding betting markets. On the example of tennis, this paper extends previous research by conducting one of the most extensive studies of its kind and applying a wide range of machine learning techniques to male and female professional singles matches. The paper shows that the average prediction accuracy cannot be increased to more than about 70%. Irrespective of the used model, most of the relevant information is embedded in the betting markets, and adding other match- and player-specific data does not lead to any significant improvement. Returns from applying predictions to the sports betting market are subject to high volatility and mainly negative over the longer term. This conclusion holds across most tested models, various money management strategies, and for backing the match favorites or outsiders. The use of model ensembles that combine the predictions from multiple approaches proves to be the most promising choice.
与此同时,机器学习及其众多变体已成为社会许多领域的既定工具。已经有几次尝试将机器学习应用于预测职业体育赛事的结果,并利用相应博彩市场的“低效率”。以网球为例,本文扩展了之前的研究,开展了同类研究中最广泛的研究之一,并将广泛的机器学习技术应用于男女职业单打比赛。研究表明,平均预测精度不能提高到70%以上。不管使用的模型是什么,大多数相关信息都嵌入在博彩市场中,添加其他特定于比赛和球员的数据不会导致任何显著的改进。将预测应用于体育博彩市场的回报波动性很大,长期来看主要是负的。这个结论适用于大多数经过测试的模型、各种各样的资金管理策略,以及支持热门或局外人。将多种方法的预测结合在一起的模型集成被证明是最有前途的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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