Forecasting the Olympic Medal Distribution during a Pandemic: A Socio-Economic Machine Learning Model

C. Schlembach, Sascha L. Schmidt, Dominik Schreyer, Linus Wunderlich
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引用次数: 2

Abstract

Forecasting the number of Olympic medals for each nation is highly relevant for different stakeholders: Ex ante, sports betting companies can determine the odds while sponsors and media companies can allocate their resources to promising teams. Ex post, sports politicians and managers can benchmark the performance of their teams and evaluate the drivers of success. To significantly increase the Olympic medal forecasting accuracy, we apply machine learning, more specifically a two-staged Random Forest, thus outperforming more traditional na\"ive forecast for three previous Olympics held between 2008 and 2016 for the first time. Regarding the Tokyo 2020 Games in 2021, our model suggests that the United States will lead the Olympic medal table, winning 120 medals, followed by China (87) and Great Britain (74). Intriguingly, we predict that the current COVID-19 pandemic will not significantly alter the medal count as all countries suffer from the pandemic to some extent (data inherent) and limited historical data points on comparable diseases (model inherent).
流行病期间奥运奖牌分布预测:一个社会经济机器学习模型
预测每个国家的奥运奖牌数对不同的利益相关者来说都是高度相关的:事前,体育博彩公司可以确定赔率,而赞助商和媒体公司可以将资源分配给有前途的球队。在此之后,体育政治家和管理者可以对其团队的表现进行基准测试,并评估成功的驱动因素。为了显著提高奥运会奖牌预测的准确性,我们应用了机器学习,更具体地说,是一个两阶段的随机森林,从而首次超越了对2008年至2016年期间举行的前三届奥运会的传统预测。对于2021年的2020年东京奥运会,我们的模型显示,美国将以120枚奖牌领跑奥运奖牌榜,其次是中国(87枚)和英国(74枚)。有趣的是,我们预测当前的COVID-19大流行不会显著改变奖牌数,因为所有国家都在一定程度上遭受了大流行(固有数据),而且可比疾病的历史数据点有限(固有模型)。
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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