基于序列数据 K-Mean 聚类的体育活动推荐系统

Rizky Haffiyan Roseno, Z. Baizal, Ramanti Dharayani
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引用次数: 0

摘要

运动等体育活动是保持健康和体魄的必要条件,尤其是对于那些采用健康生活方式的人来说。不规律的运动会伤害身体和健康,尤其是在没有根据个人体力进行运动的情况下。在这项研究的框架内,我们开发了一个推荐系统,旨在根据用户的偏好提供运动建议,尤其是在骑自行车、跑步、步行和骑马等类别中。主要考虑的变量包括心率(平均心率)和速度(速度率)。鉴于 FitRec 数据集的数据量较大,本研究方法使用 FitRec 数据集,并在 APACHE SPARK 的支持下应用 K-Mean 聚类算法进行大规模数据处理。使用 FitRec 数据集和 K-Mean 进行分组。根据心率和步伐信息对用户进行分组,从而为用户提供适当的锻炼。测试结果表明,提议的系统性能良好,如 silhouette score = 0.596、calinzski-harabaz score = 2133.09 和 davies bouldin score = 0.480 所示。这些测试指标反映了系统的聚类能力。通过这些指标间接地评估了系统的准确度性能,显示出良好的准确度测试结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physical Activities Recommender System Based on Sequential Data Use K-Mean Clustering
Physical activities such as Exercise are essential in maintaining health and fitness, especially for those who adopt a healthy lifestyle. Irregularity in doing Exercise can hurt the body and health, especially if it is not done according to one's physical capacity. In the framework of this research, we developed a Recommender System that aims to provide exercise suggestions according to the user's preferences, especially in the categories of cycling, running, walking, and horse riding. The primary considerations of the variables include heart rate (Average Heart Rate) and pace (Speed Rate). This research approach uses the FitRec Dataset and applies the K-Mean Clustering Algorithm, with the support of APACHE SPARK, for large-scale data processing, given the large data size in the FitRec dataset. Grouping is done using the FitRec dataset and K-Mean. Users are grouped according to heart rate and pace information; this provides appropriate Exercise for users. The test results show that the proposed system performs well, as indicated by the silhouette score = 0.596, calinzski-harabaz score = 2133.09, and davies bouldin score = 0.480. These test metrics reflect the system's ability to cluster. Indirectly, the accuracy performance of the system is assessed through these metrics, showing good accuracy test results.
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