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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Support vector machines for predicting the hamstring and quadriceps muscle strength of college-aged athletes
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Support vector machines for predicting the hamstring and quadriceps muscle strength of college-aged athletes

机译:支持矢量机器,用于预测大学运动员的腿筋和Quaddriceps肌肉力量

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Hamstring and quadriceps muscles are essential for the performance of athletes in various sport branches. Hamstring muscles control running activities and stabilize the knee during turns or tackles, while quadriceps muscles play an important role in jumping and kicking. Although hamstring and quadriceps muscle strength in athletes can be accurately measured using isokinetic dynamometry, practical difficulties, such as the requirement of nonportable and costly equipment as well as a long period of measurement time, motivate the researcher to predict hamstring and quadriceps muscle strength using promising machine-learning methods. The purpose of this study is to build prediction models for estimating the hamstring and quadriceps muscle strength of college-aged athletes using a support vector machine (SVM). The data set included 75 athletes selected from the College of Physical Education and Sport, Gazi University, Turkey. The predictor variables of sex, age, height, weight, body mass index, and sport branch were utilized to build the hamstring and quadriceps muscle strength prediction models for various types of training methods. The generalization error of the prediction models was calculated by carrying out 10-fold cross-validation, and the prediction errors were evaluated using several performance metrics. For comparison purposes, prediction models based on a radial basis function neural network (RBFNN) and single decision tree (SDT) were also developed. The results reveal that the SVM-based hamstring and quadriceps strength prediction models significantly outperform the RBFNN-based and SDT-based models and can be safely utilized to produce predictions regarding new data with acceptable accuracy.
机译:腿筋和Quadriceps肌肉对于各种运动分支机构的运动员来说至关重要。腿筋肌肉控制运行活动并在转弯或铲球期间稳定膝盖,而Quadriceps肌肉在跳跃和踢球中发挥着重要作用。尽管运动员中的腿筋和Quadriceps肌肉力量可以使用等因动力学进行准确测量,但实际困难,如非功率和昂贵的设备以及长期的测量时间,使研究人员能够预测使用有前途的腿筋和Quadriceps肌肉力量机器学习方法。本研究的目的是建立使用支持向量机(SVM)估算大学运动员的腿筋和Quaddriceps肌肉力量的预测模型。数据集包括从土耳其加沙大学体育和体育学院的75名运动员。用于性别,年龄,高度,体重,体重指数和运动分支的预测变量,用于为各种类型的训练方法构建腿筋和Quaddriceps肌肉强度预测模型。通过执行10倍交叉验证来计算预测模型的泛化误差,并且使用多个性能度量来评估预测误差。为了比较目的,还开发了基于径向基函数神经网络(RBFNN)和单决定树(SDT)的预测模型。结果表明,基于SVM的腿筋和QuadRiceps强度预测模型显着优于RBFNN的基于SDT的模型,并且可以安全地利用以可接受的准确性产生关于新数据的预测。

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