药方
运动处方
计算机科学
考试(生物学)
身体素质
背景(考古学)
人工神经网络
残余物
试验数据
人工智能
适应度函数
人口
机器学习
医学
物理疗法
遗传算法
古生物学
环境卫生
药理学
生物
程序设计语言
算法
作者
Runqing Fan,Zhenlian Peng,Buqing Cao,Jianxun Liu,Peng Che,Tieping Chen
标识
DOI:10.1109/cscloud-edgecom58631.2023.00046
摘要
In the context of the national big data strategy, physical fitness test data has become one of the main influencing factors in guiding and promoting the participation of the population in sports and fitness. Recommending exercise prescriptions based on national physical fitness test data has become an important research topic. However, currently, there is little research on how to accurately use computer data processing technology to recommend exercise prescriptions based on physical fitness test data. In this study, we propose a ResNet-based Exercise Prescription (ResNet-EP) method that utilizes one-dimensional residual neural network technology to recommend exercise prescriptions based on physical fitness testing data. This method comprehensively analyzes physical fitness testing data and exercise prescription data and realizes the automatic recommendation of exercise prescriptions. Experimental results on a real dataset demonstrate that the ResNet-EP model outperforms other comparison models in terms of precision (79.98%), recall (83.73%), and F1 score (81.81%). This study provides novel insights into the combination of physical fitness testing and exercise.
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