Talent identification in soccer using a one-class support vector machine

S. Jauhiainen, S. Äyrämö, H. Forsman, Jukka-Pekka Kauppi
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引用次数: 9

Abstract

Abstract Identifying potential future elite athletes is important in many sporting events. The successful identification of potential future elite athletes at an early age would help to provide high-quality coaching and training environments in which to optimize their development. However, a large variety of different skills and qualities are needed to succeed in elite sports, making talent identification generally a complex and multifaceted problem. Due to the rarity of elite athletes, datasets are inherently imbalanced, making classical statistical inference difficult. Therefore, we approach talent identification as an anomaly detection problem. We trained a nonlinear one-class support vector machine (one-class SVM) on a dataset (N=951) collected from 14-year-old junior soccer players to detect potential future elite players. The mean area under the receiver operating characteristic curve (AUC-ROC) over the tested hyperparameter combinations was 0.763 (std 0.007). The most accurate model was obtained when physical tests, measuring, for example, technical skills, speed, and agility, were used. According to our results, the proposed approach could be useful to support decision-makers in the process of talent identification.
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一类支持向量机在足球人才识别中的应用
摘要在许多体育赛事中,识别潜在的未来精英运动员非常重要。在很小的时候就成功地识别出未来潜在的精英运动员,将有助于提供高质量的教练和训练环境,以优化他们的发展。然而,要想在精英运动中取得成功,需要各种不同的技能和素质,这使得人才识别通常是一个复杂而多方面的问题。由于精英运动员的稀缺性,数据集本质上是不平衡的,这使得经典的统计推断变得困难。因此,我们将人才识别视为一个异常检测问题。我们在从14岁的青少年足球运动员收集的数据集(N=951)上训练了一个非线性一类支持向量机(一类SVM),以检测未来潜在的精英球员。在测试的超参数组合中,受试者工作特征曲线下的平均面积(AUC-ROC)为0.763(std 0.007)。当使用物理测试(例如测量技术技能、速度和灵活性)时,获得了最准确的模型。根据我们的研究结果,所提出的方法可能有助于在人才识别过程中为决策者提供支持。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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