应用大数据分析改进传统适应度模型

Muhammad Ehsan Rana, Lin Yanyu, Vazeerudeen Abdul Hameed, K. B. Nowshath
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引用次数: 0

摘要

本研究阐述了健身在当代环境中的重要性,提出了传统健身中存在的问题,并根据问题进行了一系列的讨论。运用适当的数据分析技术对健身数据进行深入分析,探索不同健身数据之间的关系。此外,本研究还探讨了分析所需的过程和工具,并解释了未来研究中可能遇到的困难和阻力。文献部分详细讨论了健身中的增肌减重,阐述了大数据框架,以及可能应用于该领域的机器学习方法。然而,由于缺乏合适的肌肉数据,回归模型只对减肥的卡路里燃烧进行了研究。最佳的平均绝对误差和决定系数分别为8.307和0.967。最后对本文的研究过程和结果进行了总结,并提出了存在的不足和今后的改进方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Traditional Fitness Model by Applying Big Data Analysis
This study elaborated on the importance of fitness in the contemporary environment, put forward the problems in traditional fitness, and conducted a series of discussions according to the questions. It conducted an in-depth analysis of fitness data utilising appropriate data analysis techniques to explore the relationship between different fitness data. Moreover, this study explores the processes and tools needed for analysis and explains the difficulties and resistance that may be encountered in future research. The literature section provides a detailed discussion on muscle gain and weight loss in fitness, the elaboration of big data frameworks, and machine learning methods that may be applied in this field. However, the regression models were only conducted on calorie burning for weight loss due to the lack of suitable muscle data. The optimal Mean Absolute Error and coefficient of determination were obtained as 8.307 and 0.967. The final section also concludes the process and results of this study and puts forward the shortcomings and the direction for future improvement.
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