4.4 Review

Machine learning application in soccer: a systematic review

Journal

BIOLOGY OF SPORT
Volume 40, Issue 1, Pages 249-263

Publisher

TERMEDIA PUBLISHING HOUSE LTD
DOI: 10.5114/biolsport.2023.112970

Keywords

Team sports; Prediction; Algorithm; Computer science; Big data

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This study systematically analyzed the feasibility of using machine learning models to predict soccer data and identified three application areas: injury prediction, performance prediction, and talent prediction. The application of machine learning in soccer has the potential to reduce chaos and improve the accuracy of decision-making predictions for team staff members.
Due to the chaotic nature of soccer, the predictive statistical models have become in a current challenge to decision-making based on scientific evidence. The aim of the present study was to systematically identify original studies that applied machine learning (ML) to soccer data, highlighting current possibilities in ML and future applications. A systematic review of PubMed, SPORTDiscus, and FECYT (Web of Sciences, CCC, DIIDW, KJD, MEDLINE, RSCI, and SCIELO) was performed according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. From the 145 studies initially identified, 32 were fully reviewed, and their outcome measures were extracted and analyzed. In summary, all articles were clustered into three groups: injury (n = 7); performance (n = 21), which was classified in match/league outcomes forecasting, physical/physiological forecasting, and technical/tactical forecasting; and the last group was about talent forecasting (n = 5). The development of technology, and subsequently the large amount of data available, has become ML in an important strategy to help team staff members in decision-making predicting dose-response relationship reducing the chaotic nature of this team sport. However, since ML models depend upon the amount of dataset, further studies should analyze the amount of data input needed make to a relevant predictive attempt which makes accurate predicting available.

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