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Anthropometric and Motor Fitness Based Assessment of Playing Positions in Volleyball Players with the AID of Predictive Machine Learning Models

机译:基于人的人体测量和电动机健身评估排球运动员在预测机器学习模型中排球运动员的职位

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Volleyball is a team sport in which the performance of the players is often dependant on various factors such as regular training and playing positions which are in turn affected by several factors of players. The Anthropometric Parameters (AP) indicate the body composition of the individual and can be used to ascertain the suitable playing positions of players. Further, aspects such as Motor Fitness Parameters (MFP) can impact the quality of play in volleyball. The present work was successful in concluding that the BMI and Height in AP and Explosive Power (EP) and Relative Jump (RJ) in MFP are indicative of playing positions, with EP and RJ being statistically significant features as well. For predicting suitable playing positions, machine learning algorithms namely Support Vector Machine (SVM), SVM with variable scaling, SVM with hyper parameter optimization and Extreme Gradient Boosting (XG Boost) with model based learning parameters were used. The classification results were found to be accurate upto 98.98% in SVM with tuned hyper parameter optimization technique and in XG Boost. But XG Boost was found to perform significantly faster than the former approach. Such approaches can be incorporated in various training and rehabilitation programs in volleyball to improve the performance of the players.
机译:排球是一项团队运动,其中玩家的表现往往依赖于各种因素,例如经常培训和竞争职位,这些因素又影响了受几个球员的几个因素。人体测量参数(AP)表示个人的身体成分,可用于确定球员的合适播放位置。此外,诸如电动机健身参数(MFP)之类的方面可以影响排球中的游戏质量。目前的工作得出结论是,在MFP中的AP和爆炸性电源(EP)和爆炸力(EP)和相对跳跃(RJ)的BMI和高度表示在统计上具有统计上显着的特征的举个位置。为了预测合适的播放位置,使用机器学习算法即支持向量机(SVM),使用具有基于模型的学习参数的具有可变缩放的SVM,具有超参数优化和极端渐变升压(XG Boost)。发现分类结果在SVM中准确高达98.98%,具有调谐的超参数优化技术和XG提升。但发现XG提升比以前的方法更快地执行。这些方法可以在排球中的各种培训和康复计划中纳入,以改善玩家的表现。

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