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A data-driven integer programming model for soccer clubs’ decision making on player transfers

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Abstract

This paper presents a mathematical model that provides soccer clubs with optimal player transfer recommendations. Using publicly available data on soccer clubs and players, we create a data-driven optimization model that aids soccer clubs in making informed decisions on how to optimally allocate their multi-million dollar transfer budgets. First, some performance attributes, market value, and salary of 7377 real players from across the world are forecasted using a simple moving average method. Next, these forecasted values are input into an integer programming model that solves for the optimal transfer decisions for any club with the objective of maximizing the club’s utility. This utility is a function of the forecasted values, and increases in the market values of the club’s players. Constraints are imposed to reflect the rules and regulations of club soccer. The model focuses on the Premier League (PL), the first-division soccer league in England and Wales. Numerical results are provided for twelve selected clubs in the PL, for the transfer periods during 2016–2017 and 2017–2018. The results show that transfers recommended by the model could help the clubs achieve better market values. The model can be easily customized to fit any club from any country. Our study provides significant contributions to the literature on optimal budget allocation and team selection in sports, by addressing some important ideas that are not considered in the literature.

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Acknowledgements

The authors thank the anonymous referees for their constructive comments that have helped improve this paper tremendously. The authors thank the editors and the staff of Environment Systems and Decisions in being extremely helpful with the revision process. The authors also thank Mr. Zachary Steever for providing comments for improving the paper. The data and code can be found at: https://github.com/vineetmp/soccer-transfer-optimization/tree/master/IP-version-1.

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Correspondence to Jun Zhuang.

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Payyappalli, V.M., Zhuang, J. A data-driven integer programming model for soccer clubs’ decision making on player transfers. Environ Syst Decis 39, 466–481 (2019). https://doi.org/10.1007/s10669-019-09721-7

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