基于机器学习的学生心理健康瑜伽推荐系统

R. S., D. Singh, Shubham Kar
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引用次数: 0

摘要

社会对学生的许多期望使压力成为他们学术生活的一部分。青少年很容易受到学业压力带来的问题,因为他们正在经历个人和社会两方面的转变阶段。研究表明,学业压力会降低学生的学业成绩和学习动机。因此,制定适当和有效的干预方案变得至关重要。最近,由于新冠肺炎疫情,在线健康博客和推荐健康、运动和瑜伽的网站的使用率大幅增加。博客会提供一个问题的解决方案,然后为普通人提供预防措施,但他们缺乏动态的瑜伽建议,可以做任何人或个性化的瑜伽,考虑到他们的健康状况,而不是一个静态的文章。这项研究工作旨在开发一个人工智能模型,通过考虑学生的BPM、血压(收缩压和舒张压)、睡眠时间和一些与压力相关的问题,来预测学生可以采取的可能的措施来缓解他们的问题。提出的压力预测模型准确率达到94.4%,瑜伽姿势推荐系统准确率达到97.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Yoga Recommendation System for the Mental Well-Being of Students using Machine Learning
Many expectations placed on students by society have made stress a part of their academic lives. Youth are susceptible to the issues brought on by academic stress since they are going through a phase of transitions in both aspects i.e personal and social. Academic stress has been shown to lower academic achievement and lower motivation toward academics. Therefore, it becomes crucial to develop appropriate and effective intervention options. In recent times, due to COVID, the utilization of online health blogs and sites recommending health, exercise, and yoga has been significantly increased. The blog will provide solution to a problem and then provide precautions to common people but they lack the dynamics to suggest yoga that can be done any person or a personalized yoga by considering their health condition and not a static article. This research work intends to develop an AI model to predict the possible practices a student can do to alleviate their problem by considering their BPM, blood pressure (both systole and diastole), sleep time and some questions related to stress. The proposed stress prediction model has achieved an accuracy of 94.4% and the yoga pose recommendation system has achieved an accuracy of 97.3%.
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