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The analysis on college students' physical fitness testing data — two cases study

机译:大学生体质测试数据分析-两个案例研究

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College students physical fitness test is an important means for physical fitness evaluation. The test includes body mass index(BMI), lung's capacity, 50 and 1000(male)/800(female) meters run, standing long jump, sit and reach, pull-up(male)/sit-up(female). Final result is weighted sum of the seven items. According to national standard of physical fitness for students, the weights are 15%, 15%, 20%, 10%, 20%, 10%, 10%, respectively. We can regard it as a dimensionality reduction process, which reduces the original data to one dimension. Using fixed weights, the results will neglect differences among students in different areas. Therefore, it is important to learn the weights from the data. The learned weights can not only give students a reasonable evaluation of physical ability, but also reflect the characteristics of the samples. In this paper, we present a learning model for the weights of students' physical fitness tests. The solution algorithm is also presented. We then employ proposed method to analyze two data sets, The results demonstrate that the model presented in this paper has advantages for college students physical fitness test data analysis.
机译:大学生体质测试是身体素质评估的重要手段。该测试包括体重指数(BMI),肺活量,跑步50和1000(男性)/ 800(女性)米,站立跳远,坐直和伸手,上拉(男性)/仰卧起坐(女性)。最终结果是这七个项目的加权总和。根据国家学生身体健康标准,体重分别为15%,15%,20%,10%,20%,10%,10%。我们可以将其视为降维过程,它将原始数据降为一维。使用固定权重,结果将忽略不同地区学生之间的差异。因此,从数据中学习权重很重要。学到的权重不仅可以给学生合理的体能评估,还可以反映出样本的特征。在本文中,我们为学生的体能测验重量提供了一种学习模型。还提出了求解算法。然后,采用拟议的方法对两个数据集进行了分析,结果表明本文提出的模型对大学生体质测试数据分析具有优势。

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