Applied Sciences (Aug 2024)

Football Analytics: Assessing the Correlation between Workload, Injury and Performance of Football Players in the English Premier League

  • Victor Chang,
  • Sreeram Sajeev,
  • Qianwen Ariel Xu,
  • Mengmeng Tan,
  • Hai Wang

DOI
https://doi.org/10.3390/app14167217
Journal volume & issue
Vol. 14, no. 16
p. 7217

Abstract

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The aim of this research is to shed light on the complex interactions between player workload, traits, match-related factors, football performance, and injuries in the English Premier League. Using a range of statistical and machine learning techniques, this study analyzed a comprehensive dataset that included variables such as player workload, personal traits, and match statistics. The dataset comprises information on 532 players across 20 football clubs for the 2020–2021 English Premier League season. Key findings suggest that data, age, average minutes played per game, and club affiliations are significant indicators of both performance and injury incidence. The most effective model for predicting performance was Ridge Regression, whereas Extreme Gradient Boosting (XGBoost) was superior for predicting injuries. These insights are invaluable for data-driven decision-making in sports science and football teams, aiding in injury prevention and performance enhancement. The study’s methodology and results have broad applications, extending beyond football to impact other areas of sports analytics and contributing to a flexible framework designed to enhance individual performance and fitness.

Keywords