PREDICTION OF FOOTBALL PLAYER’S POSITION USING MACHINE LEARNING ALGORITHMS
DOI:
https://doi.org/10.24867/13BE31SkiljevicKeywords:
football, position, machine learning, classificationAbstract
Football is a collective sport that is played between two teams, composed of eleven players each. Although players play in a predetermined position, they can quickly move to another position. In this paper, the prediction of the best position for a football player was made based on his physical and mental characteristics. This approach's primary motivation is to provide additional information to coaches whose clubs are faced with many injured players. Each player was represented with a vector of 65 attributes, and the following models: Multinomial Logistic Regression, K-Nearest Neighbors, Random Forest, Gaussian Naive Bayes, Support Vector Machine were experimented with.
References
[1] N. Razali, A. Mustapha, F. A. Yatim, „Predicting Player Position for Talent Identification in Association Football”, International Research and Innovation Summit (IRIS2017) 6–7 May 2017, Melaka, Malaysia
[2] N. Chandarana,“Football Player Position Prediction”, Towards data science, May 2019, Dostupno: https://towardsdatascience.com [Pristupljeno: februar 2021]
[3] D. Schoch, “Predicting player positions”, Schocastics, Nov 2017, Dostupno: http://blog.schochastics.net [Pristupljeno: februar 2021]
[4] M. Wiseman “Machine Learning using FIFA 2019”, Linkedin, Feb 2019, Dostupno: https://www.linkedin.com [Pristupljeno: februar 2021]
[2] N. Chandarana,“Football Player Position Prediction”, Towards data science, May 2019, Dostupno: https://towardsdatascience.com [Pristupljeno: februar 2021]
[3] D. Schoch, “Predicting player positions”, Schocastics, Nov 2017, Dostupno: http://blog.schochastics.net [Pristupljeno: februar 2021]
[4] M. Wiseman “Machine Learning using FIFA 2019”, Linkedin, Feb 2019, Dostupno: https://www.linkedin.com [Pristupljeno: februar 2021]
Downloads
Published
2021-07-04
Issue
Section
Electrotechnical and Computer Engineering