Prediction of soccer clubs’ league rankings by machine learning methods: The case of Turkish Super League

A. E. Tümer, Zeki Akyildiz, Aytek Hikmet Güler, Esat Kaan Saka, Riccardo Ievoli, Lucio Palazzo, F. Clemente
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Abstract

The aim of this research is to predict league rankings through various machine learning models using technical and physical parameters. This study followed a longitudinal observational analytical design. The SENTIO Sports optical tracking system was used to measure the physical demands and technical practices of the players in all matches. Then, the data regarding the last three seasons of the Turkish Super League (2015–2016, 2016−2017, and 2017−2018), was collected. In this research, league rankings were estimated using three machine learning methods: Artificial Neural Networks (ANN), Radial Basis Function (RBFN), Multiple Linear Regression (MLR) with technical and physical parameters of all seasons. Performances were evaluated through R2, Root Mean Square Error (RMSE), and Mean Absolute Error (MAE). Prediction results of the models are the following: ANN Model; R2 = 0.60, RMSE = 3.7855 and MAE = 2.9139, RBFN Model; R2 = 0.26, MAE = 3.6292 and RMSE = 4.5168, MLR Model; R2 = 0.46, MAE = 3.4859 and RMSE = 4.2064. These results showed that ANN can be used as a successful tool to predict league rankings. In the light of this research, coaches and athletic trainers can organize their training in a way that affects the technical and physical parameters to change the results of the competition. Thus, it will be possible for teams to have a better place in the league-end success ranking.
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用机器学习方法预测足球俱乐部联赛排名:以土耳其超级联赛为例
这项研究的目的是通过使用技术和物理参数的各种机器学习模型来预测联赛排名。本研究采用纵向观察分析设计。使用SENTIO Sports光学跟踪系统测量所有比赛中运动员的身体需求和技术练习。然后,收集了土耳其超级联赛最近三个赛季(2015-2016、2016 - 2017和2017 - 2018)的数据。本研究采用人工神经网络(ANN)、径向基函数(RBFN)和多元线性回归(MLR)三种机器学习方法,结合各个赛季的技术和物理参数,对联赛排名进行估计。通过R2、均方根误差(RMSE)和平均绝对误差(MAE)对性能进行评估。模型的预测结果如下:人工神经网络模型;R2 = 0.60, RMSE = 3.7855, MAE = 2.9139, RBFN模型;R2 = 0.26, MAE = 3.6292, RMSE = 4.5168, MLR模型;R2 = 0.46, MAE = 3.4859, RMSE = 4.2064。这些结果表明,人工神经网络可以作为一个成功的工具来预测联赛排名。根据本研究,教练员和运动训练员可以通过影响技术和身体参数的方式来组织训练,从而改变比赛结果。因此,这将有可能为球队有一个更好的位置在联赛结束后的成功排名。
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来源期刊
CiteScore
3.50
自引率
20.00%
发文量
51
审稿时长
>12 weeks
期刊介绍: The Journal of Sports Engineering and Technology covers the development of novel sports apparel, footwear, and equipment; and the materials, instrumentation, and processes that make advances in sports possible.
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