A semi-supervised machine learning approach to define pressing roles in football
Article
Peters, A., Parmar, N., Davies, M. and James, N. 2025. A semi-supervised machine learning approach to define pressing roles in football. International Journal of Computer Science in Sport. 24 (2), pp. 62-79. https://doi.org/10.2478/ijcss-2025-0013
| Type | Article |
|---|---|
| Title | A semi-supervised machine learning approach to define pressing roles in football |
| Authors | Peters, A., Parmar, N., Davies, M. and James, N. |
| Abstract | A player’s role for a team can be distinct from their playing position. Positions are generally attributed based on where the players line-up relative to their formation, whereas roles can be defined by frequency of their actions. Hence, the method presented in this research, attributed player roles based on event data. Player role feature selection involved a semi-supervised machine learning approach, that extracted feature importance in the form of Shapley values. These values helped define the KPIs for pressing attacking players. By using the proposed role similarity approach, it is possible for recruitment departments to identify players that occupy similar roles as current players. Furthermore, the evolution of player roles across time can be evaluated, which has applications with performance analysts, as they can interrogate the constituent roles of each player and its influence on overall team performance. Hence, the proposed method can help uncover the optimal KPIs for a given set of roles, while having practitioner applications within elite-level performance analysis and recruitment departments. Future methods should combine physical data sources, such as from tracking data, to enable greater specificity in player role classification. |
| Keywords | pressing; dimensionality reduction; player role; UMAP |
| Sustainable Development Goals | 3 Good health and well-being |
| Middlesex University Theme | Health & Wellbeing |
| Research Group | Performance Analysis at the London Sport Institute |
| Publisher | Sciendo |
| International Association of Computer Science in Sport | |
| Journal | International Journal of Computer Science in Sport |
| ISSN | |
| Electronic | 1684-4769 |
| Publication dates | |
| 01 Jun 2025 | |
| Online | 25 Dec 2025 |
| Publication process dates | |
| Accepted | 03 Dec 2025 |
| Deposited | 06 Jan 2026 |
| Output status | Published |
| Publisher's version | License File Access Level Open |
| Copyright Statement | © 2025 Andrew Peters, Nimai Parmar, Michael Davies, Nic James, published by International Association of Computer Science in Sport. |
| Digital Object Identifier (DOI) | https://doi.org/10.2478/ijcss-2025-0013 |
https://repository.mdx.ac.uk/item/26x46x
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Publisher's version
| A_Semi-Supervised_Machine_Learning_Approach_to_Define_Pressing_Roles_in_Football.pdf | ||
| License: CC BY-NC-ND 4.0 | ||
| File access level: Open | ||
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