Examination of Player Positions by Cluster Analysis

Okan Dağ, Asım Sinan Yüksel, Şerafettin Atmaca
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Abstract

Today, the football industry stands out among the sports branches. Especially with the development of technology and its integration into football, different tactical understandings and formations emerge. With these developments, the current positions of the players and the other positions they are prone to play can be revealed as a result of the analysis. In this way, club management and technical team aim to establish the best team according to the current budget and tactical game understanding. Therefore, it is very important for the teams to play the players in the right position or to transfer the right player to the required position. In football competitions where 11 players are involved in the game, tactical changes can be made within the game according to the tactical arrangement and tactical understanding of the opposing team, and the player can be played in different positions. In this study, the player data of Turkey and the leagues of Germany, England, France, Spain, Italy, which are considered to be the five big leagues, for the years 2020-2021 were obtained from the website named “whoscored”. In the data set obtained, the players who stayed on the field for a minimum of 1500 minutes were taken as a basis and clustering analysis was performed with the data of 985 players. Players are clustered on four basic positions: goalkeeper, defender, midfielder and attacker. In the study, Expectation Maximization, one of the clustering analysis algorithms, was used and a success rate of 81 percent was achieved.
用聚类分析检验球员位置
今天,足球产业在体育分支中脱颖而出。特别是随着技术的发展和技术与足球的融合,出现了不同的战术理解和阵型。有了这些发展,球员的当前位置和他们可能会打的其他位置就可以作为分析的结果显示出来。通过这种方式,俱乐部管理层和技术团队的目标是根据目前的预算和战术游戏的理解建立最好的球队。因此,对于球队来说,把球员放在合适的位置上或者把合适的球员转移到需要的位置上是非常重要的。在11人参加的足球比赛中,可以根据对方球队的战术安排和战术理解,在比赛中进行战术变化,球员可以在不同的位置上踢球。在本研究中,土耳其和被认为是五大联赛的德国、英格兰、法国、西班牙、意大利联赛2020-2021年的球员数据来自名为“whoscoked”的网站。在得到的数据集中,以上场时间至少1500分钟的球员为基础,对985名球员的数据进行聚类分析。球员集中在四个基本位置:守门员、后卫、中场和攻击手。在研究中,使用了聚类分析算法之一的期望最大化,成功率达到81%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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