使用机器学习技术对健身应用程序中的用户进行分类

Shyamali Das, Pamela Chaudhury, Hrudaya Kumar Tripathy
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引用次数: 0

摘要

如今,健康是重中之重。人们正在努力改善他们的健康,使他们的身体更健康。大多数人使用健身应用程序来跟踪他们的日常活动。这款健身App为所有用户提供健身训练、骑行、跑步、瑜伽、健身饮食指导等一站式运动解决方案。Fitbit Kaggle数据集包含18个CSV文件和大约2.5万用户,用于本研究。数据集是根据“睡眠时间vs活动时间”和“记录的活动vs未记录的活动”进行分析的。K-means机器学习技术用于根据各种因素对App用户进行聚类,以及他们是否有资格获得奖金或奖励积分。本文主要研究了基于聚类的无监督学习对用户进行分类。这样一个与机器学习技术相结合的健身应用程序可以智能地激励他们的客户全天保持活跃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Employing Machine Learning Techniques to Categorize users in a Fitness Application
Nowadays, health is a top priority. People are putting in a lot of effort to improve their health and make their bodies healthier. The majority of people use fitness apps to track their daily activities. This Fitness App provides all users with one-stop exercise solutions such as fitness training, cycling, running, yoga, and fitness diet guidance. The Fitbit Kaggle dataset, which contains 18 CSV files and approximately 2.5K users, was used in this study. The data set was analyzed in terms of “sleep vs active minutes” and “logged activity vs not logged activity.” The K-means machine learning technique is used to cluster App users based on a variety of factors, and whether they are eligible for bonuses or reward points. This paper's research focused on user categorization using unsupervised learning based on cluster. Such a Fitness App integrated with machine learning technique could intelligently motivated their customer in staying active throughout the day.
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