Quercus Software Engineering Group, University of Extremadura, Cáceres, Spain.
Computer Science Department, University of Burgos, Burgos, Spain.
PLoS One. 2019 Sep 4;14(9):e0221258. doi: 10.1371/journal.pone.0221258. eCollection 2019.
In any sport the selection of players for a team is fundamental for its subsequent performance. Many factors condition the selection process from the characteristics of the sport discipline to financial limitations, including a long list of restrictions associated with the environment of the competitions in which the team takes part. All of this makes the process of selecting a roster of players very complex, as it is affected by multiple variables and in many cases marked by a great deal of subjectivity. The purpose of this article was to objectively select the players for a basketball team using an evolutionary algorithm, the Non-dominated Sorting Genetic Algorithm II (NSGA-II) that uses stochastic search methods based on the imitation of natural biological evolution. The sample was composed of the players from the teams competing in the top Spanish basketball league, the Association of Basketball Clubs (ACB). To assess the quality of the solutions obtained, the results were compared with the teams in the ACB playing in the same competition as the players used in the study. The results make it possible to obtain different solutions for composing teams rendering financial resources profitable and taking into account the restrictions of the competition and of each sport management.
在任何运动中,球员的选拔对于团队的后续表现都是至关重要的。许多因素影响着选拔过程,从运动项目的特点到财务限制,包括与团队参加的比赛环境相关的一长串限制。所有这些使得选拔球员的过程变得非常复杂,因为它受到多个变量的影响,而且在许多情况下还带有很大的主观性。本文的目的是使用进化算法,即基于自然生物进化模拟的随机搜索方法的非支配排序遗传算法 II(NSGA-II),客观地选拔篮球队的球员。样本由参加西班牙顶级篮球联赛(篮球俱乐部协会,ACB)的球队的球员组成。为了评估所获得的解决方案的质量,将结果与在与研究中使用的球员相同的比赛中参加 ACB 的球队进行了比较。结果使得可以获得不同的团队组合解决方案,使财务资源盈利,并考虑到比赛和每个运动管理的限制。