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通过机器学习预测 20 米短跑成绩的形态特征的作用。

The role of morphometric characteristics in predicting 20-meter sprint performance through machine learning.

机构信息

Department of Coaching Education, Faculty of Sport Science, Bandirma Onyedi Eylul University, Balıkesir, 10200, Turkey.

Department of Physical Education and Sport Teaching, Faculty of Sports Sciences, Inonu University, Malatya, Turkey.

出版信息

Sci Rep. 2024 Jul 18;14(1):16593. doi: 10.1038/s41598-024-67405-y.

Abstract

The aim of this study was to test the morphometric features affecting 20-m sprint performance in children at the first level of primary education using machine learning (ML) algorithms. In this study, 130 male and 152 female volunteers aged between 6 and 11 years were included. After obtaining demographic information of the participants, skinfold thickness, diameter and circumference measurements, and 20-m sprint performance were determined. The study conducted three distinct experiments to determine the optimal ML technique for predicting outcomes. Initially, the entire feature space was utilized for training the ML models to establish a baseline performance. In the second experiment, only significant features identified through correlation analysis were used for training and testing the models, enhancing the focus on relevant predictors. Lastly, Principal Component Analysis (PCA) was employed to reduce the feature space, aiming to streamline model complexity while retaining data variance. These experiments collectively aimed to evaluate different feature selection and dimensionality reduction techniques, providing insights into the most effective strategies for optimizing predictive performance in the given context. The correlation-based selected features (Age, Height, waist circumference, hip circumference, leg length, thigh length, foot length) has produced a minimum Mean Squared Error (MSE) value of 0.012 for predicting the sprint performance in children. The effective utilization of correlation analysis in the selection of relevant features for our regression model suggests that the features selected exhibit robust linear associations with the target variable and can be relied upon as predictors.

摘要

本研究旨在使用机器学习 (ML) 算法测试影响小学一年级儿童 20 米短跑表现的形态特征。本研究纳入了 130 名男性和 152 名女性志愿者,年龄在 6 至 11 岁之间。在获得参与者的人口统计学信息后,测量了体脂厚度、直径和周长,并确定了 20 米短跑成绩。该研究进行了三个不同的实验,以确定预测结果的最佳 ML 技术。首先,使用整个特征空间训练 ML 模型以建立基线性能。在第二个实验中,仅使用相关性分析确定的显著特征来训练和测试模型,从而更关注相关预测因子。最后,采用主成分分析 (PCA) 来减少特征空间,旨在在保留数据方差的同时简化模型复杂性。这些实验旨在评估不同的特征选择和降维技术,为在给定背景下优化预测性能提供了见解。基于相关性选择的特征(年龄、身高、腰围、臀围、腿长、大腿长、脚长)在预测儿童短跑成绩方面产生了最小的均方误差 (MSE) 值 0.012。相关性分析在选择与回归模型相关的特征方面的有效利用表明,所选特征与目标变量之间存在稳健的线性关联,可作为预测因子。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6198/11258122/ef607a850c88/41598_2024_67405_Fig1_HTML.jpg

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