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Performance comparison of different regression methods for maximal oxygen uptake estimation of cross-country skiers

机译:越野滑雪者最大摄氧量估算的不同回归方法的性能比较

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Maximal oxygen uptake (VOmax) is the one of the most important determinants of cross-country ski race performance. The purpose of this study is to develop new VOmax prediction models for cross-country skiers by using General Regression Neural Network (GRNN), Cascade Correlation Network (CCN) and Single Decision Tree (SDT). In order to develop VOmax prediction models, a dataset including data of 139 subjects and the input variables age, gender, height, weight, body mass index (BMI), heart rate at lactate threshold (HRLT), maximum heart rate (HRmax) and time have been used. Applying 10-fold cross validation on the dataset, multiple correlation coefficients (R's) and standard error of estimates (SEE's) of the models have been calculated. It is shown that GRNN-based models yield 12.13% and 25.50% lower SEE's on the average than the ones obtained by CCN-based and SDT- based models.
机译:最大摄氧量(VOmax)是越野滑雪比赛性能的最重要决定因素之一。这项研究的目的是通过使用通用回归神经网络(GRNN),串级相关网络(CCN)和单决策树(SDT)为越野滑雪者开发新的VOmax预测模型。为了开发VOmax预测模型,数据集包括139位受试者的数据以及输入变量,年龄,性别,身高,体重,体重指数(BMI),乳酸阈值心率(HRLT),最大心率(HRmax)和时间已经用完了。在数据集上应用10倍交叉验证,已计算出模型的多个相关系数(R)和估计值的标准误差(SEE)。结果表明,与基于CCN和SDT的模型相比,基于GRNN的模型的SEE平均降低了12.13%和25.50%。

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