Using multi-criteria decision-making and machine learning for football player selection and performance prediction: A systematic review

Abdessatar Ati , Patrick Bouchet , Roukaya Ben Jeddou
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Abstract

Evaluating and selecting players to suit football clubs and decision-makers (coaches, managers, technical, and medical staff) is a difficult process from a managerial-financial and sporting perspective. Football is a highly competitive sport where sponsors and fans are attracted by success. The most successful players, based on their characteristics (criteria and sub-criteria), can influence the outcome of a football game at any given time. Consequently, the D-day of selection should employ a more appropriate approach to human resource management. To effectively address this issue, a detailed study and analysis of the available literature are needed to assist practitioners and professionals in making decisions about football player selection and hiring. Peer-reviewed journals were selected for collecting published papers between 2018 and 2023. A total of 66 relevant articles (journal articles, conference articles, book sections, and review articles) were selected for evaluation and analysis. The purpose of the study is to present a systematic literature review (SLR) on how to solve this problem and organize the published research papers that answer our four research questions.

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将多标准决策和机器学习用于足球运动员选拔和成绩预测:系统综述
从管理、财务和体育的角度来看,评估和挑选适合足球俱乐部和决策者(教练、经理、技术和医务人员)的球员是一个困难的过程。足球是一项竞争激烈的运动,赞助商和球迷都被成功所吸引。根据球员的特点(标准和次级标准),最成功的球员在任何时候都能影响足球比赛的结果。因此,D 日选拔应采用更合适的人力资源管理方法。为有效解决这一问题,有必要对现有文献进行详细研究和分析,以帮助从业人员和专业人士就足球运动员的选拔和聘用做出决策。我们选择了同行评审期刊,收集 2018 年至 2023 年间发表的论文。共选取了 66 篇相关文章(期刊论文、会议文章、书籍章节和评论文章)进行评估和分析。本研究的目的是就如何解决这一问题提出系统的文献综述(SLR),并整理已发表的研究论文,回答我们的四个研究问题。
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