Using machine learning to determine the positions of professional soccer players in terms of biomechanical variables

Author:

Yagin Fatma Hilal1,Hasan Uday CH23ORCID,Clemente Filipe Manuel45ORCID,Eken Ozgur6,Badicu Georgian7ORCID,Gulu Mehmet8

Affiliation:

1. Department of Biostatistics and Medical Informatics, Faculty of Medicine, Inonu University, Malatya, Turkiye

2. Department of Physical Education and Sports Sciences, Al-Kitab University, Kirkuk, Iraq

3. Faculty of Physical Education and Sports Sciences, University of Kirkuk, Kirkuk, Iraq

4. Escola Superior Desporto e Lazer, Instituto Politécnico de Viana do Castelo, Viana do Castelo, Portugal

5. Instituto de Telecomunicações, Delegação da Covilhã, Lisboa, Portugal

6. Physical Education and Sports Teaching, Faculty of Sport Science, Inonu University, Malatya, Turkiye

7. Department of Physical Education and Special Motricity, Faculty of Physical Education and Mountain Sports, Transilvania University of Braşov, Braşov, Romania

8. Department of Coaching Education, Faculty of Sport Sciences, Kirikkale University, Kirikkale, Turkiye

Abstract

This study aimed to predict professional soccer players’ positions with machine learning according to certain locomotor demands. Data from 20 male professional soccer players (five defenders, eight midfielders, and seven attackers) from the same team were tracked daily with a global navigation satellite system. A total of 1910 individual training sessions were recorded. The 10-fold cross-validation method was used. Soccer player positions were predicted using predictive models created with random forest (RF), gradient boosting tree, bagging classification, and regression trees algorithms, and the results were evaluated with comprehensive performance measures. Ratios and an importance plot were used to analyze the importance of the variables according to their contributions to the estimation. The findings show that the RF model achieved 100% accuracy, which means that RF can predict all player positions (100%). Running distance (26.5%), total distance (17.2%), and player load (15.8%) were the three variables that contributed the most to the estimation of the RF model and were the most important factor in distinguishing player positions. Consequently, our proposed machine learning approach (RF model) can reduce false alarms and player mispositioning.

Funder

Fundação para a Ciência e Tecnologia/ Ministério da Ciência, Tecnologia e Ensino Superior through national funds and when applicable co-funded EU funds under the project

Publisher

SAGE Publications

Subject

General Engineering

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