Nikolaos-Orestis Retzepis, Alexandra Avloniti, Christos Kokkotis, Maria Protopapa, Theodoros Stampoulis, Anastasia Gkachtsou, Dimitris Pantazis, Dimitris Balampanos, Ilias Smilios, Athanasios Chatzinikolaou
{"title":"利用可解释的机器学习识别预测青少年团队运动运动员身高速度峰值年龄的关键因素。","authors":"Nikolaos-Orestis Retzepis, Alexandra Avloniti, Christos Kokkotis, Maria Protopapa, Theodoros Stampoulis, Anastasia Gkachtsou, Dimitris Pantazis, Dimitris Balampanos, Ilias Smilios, Athanasios Chatzinikolaou","doi":"10.3390/sports12110287","DOIUrl":null,"url":null,"abstract":"<p><p>Maturation is a key factor in sports participation and often determines the young athletes' characterization as a talent. However, there is no evidence of practical models for understanding the factors that discriminate children according to maturity. Hence, this study aims to deepen the understanding of the factors that affect maturity in 11-year-old Team Sports Athletes by utilizing explainable artificial intelligence (XAI) models. We utilized three established machine learning (ML) classifiers and applied the Sequential Forward Feature Selection (SFFS) algorithm to each. In this binary classification task, the logistic regression (LR) classifier achieved a top accuracy of 96.67% using the seven most informative factors (Sitting Height, Father's Height, Body Fat, Weight, Height, Left and Right-Hand Grip Strength). The SHapley Additive exPlanations (SHAP) model was instrumental in identifying the contribution of each factor, offering key insights into variable importance. Independent sample <i>t</i>-tests on these selected factors confirmed their significance in distinguishing between the two classes. By providing detailed and personalized insights into child development, this integration has the potential to enhance the effectiveness of maturation prediction significantly. 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引用次数: 0
摘要
成熟度是参与体育运动的一个关键因素,往往决定着年轻运动员作为天才的定性。然而,目前还没有证据表明有实用模型可用于了解根据成熟度区分儿童的因素。因此,本研究旨在利用可解释人工智能(XAI)模型,加深对影响 11 岁团队运动运动员成熟度因素的理解。我们使用了三个成熟的机器学习(ML)分类器,并对每个分类器应用了序列前向特征选择(SFFS)算法。在这项二元分类任务中,逻辑回归(LR)分类器利用七个信息量最大的因素(坐姿身高、父亲身高、体脂、体重、身高、左手和右手握力)达到了 96.67% 的最高准确率。SHapley Additive exPlanations(SHAP)模型有助于确定每个因素的贡献,为了解变量的重要性提供了重要依据。对这些选定因素进行的独立样本 t 检验证实了它们在区分两个班级方面的重要性。通过对儿童发展提供详细和个性化的见解,这种整合有可能大大提高成熟预测的有效性。这些进步将为年轻运动员的儿科生长分析带来变革性的方法,从而提高儿童的运动表现和发育成果。
Identifying Key Factors for Predicting the Age at Peak Height Velocity in Preadolescent Team Sports Athletes Using Explainable Machine Learning.
Maturation is a key factor in sports participation and often determines the young athletes' characterization as a talent. However, there is no evidence of practical models for understanding the factors that discriminate children according to maturity. Hence, this study aims to deepen the understanding of the factors that affect maturity in 11-year-old Team Sports Athletes by utilizing explainable artificial intelligence (XAI) models. We utilized three established machine learning (ML) classifiers and applied the Sequential Forward Feature Selection (SFFS) algorithm to each. In this binary classification task, the logistic regression (LR) classifier achieved a top accuracy of 96.67% using the seven most informative factors (Sitting Height, Father's Height, Body Fat, Weight, Height, Left and Right-Hand Grip Strength). The SHapley Additive exPlanations (SHAP) model was instrumental in identifying the contribution of each factor, offering key insights into variable importance. Independent sample t-tests on these selected factors confirmed their significance in distinguishing between the two classes. By providing detailed and personalized insights into child development, this integration has the potential to enhance the effectiveness of maturation prediction significantly. These advancements could lead to a transformative approach in young athletes' pediatric growth analysis, fostering better sports performance and developmental outcomes for children.