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Physical Fitness Clustering Analysis Based on Self-Organizing Feature Maps Network

机译:基于自组织特征图网络的健身聚类分析

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Clustering analysis based on self-organizing feature maps (SOM) network has been widely used in various areas of cluster analysis. In this paper, this network is applied to the clustering analysis of students' physical level. The software is used to study and train the designed self-organizing feature maps network. Correspondingly, Neural Network Model, and the physical measurement level of three levels of classification (The first level is good, the second level is qualified, the third level is unqualified), to achieve the level of physical cluster analysis. The results show that the self-organizing feature maps network can automatically classify the physical test scores unsupervised learning, and visually and clearly see the level classification of the physical test scores, analyze the main factors affecting physical fitness from the clustering analysis of physical test results.
机译:基于自组织特征图(SOM)网络的聚类分析已广泛应用于聚类分析的各个领域。本文将该网络应用于学生体能水平的聚类分析。该软件用于研究和训练设计的自组织特征图网络。相应地,将神经网络模型和物理测量级别分为三个级别(第一个级别为好,第二个级别为合格,第三个级别为不合格),以实现物理聚类分析的级别。结果表明,自组织特征图网络可以自动对无监督学习的体能测验成绩进行分类,并直观,清晰地看到体能测验成绩的等级分类,并通过对体能测验结果的聚类分析来分析影响体能的主要因素。

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