Stress Prediction of Students using Machine Learning

Disha Sharma, Tjprc
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引用次数: 4

Abstract

On the daily basis, people are suffering from the stress illness because of many factors which include the social factor, external stimulus or environment factors and internal factors. In healthcare, vast development have been made with the use of machine learning. Stress is a fatal disease causing a considerable number of fatalities across the world. The machine learning enable the prediction of the possibility of stress prediction in the under studies of students like, graduate, under graduate, post graduate and professional students. In this paper we analyze the performance of machine learning techniques to reduce the risk of stress prediction resulting in early treatment of the understudies’ students. The data set was collect from university with the help of pss scale and it made up of more than 200 student’s data. Different types of classification algorithms Naive Baye’s, Linear Regression, Multi-layer perceptron, Bayes Net, J48 and random forest are using and also we calculate their accuracy with the help of performance parameter like TP, FP, ROC, F-Measure etc . In this research Random forest classifier gives high accuracy of 94.73%.
使用机器学习的学生压力预测
在日常生活中,人们遭受压力性疾病的原因有很多,包括社会因素、外界刺激或环境因素以及内部因素。在医疗保健领域,机器学习的应用取得了巨大的发展。压力是一种致命的疾病,在世界各地造成了相当多的死亡。机器学习可以预测研究生、本科生、研究生、专业学生等在校生的压力预测可能性。在本文中,我们分析了机器学习技术的性能,以降低压力预测的风险,从而导致对替补学生的早期治疗。数据集是通过pss量表从大学收集的,由200多名学生的数据组成。使用了朴素贝叶斯、线性回归、多层感知器、贝叶斯网络、J48和随机森林等不同类型的分类算法,并借助TP、FP、ROC、F-Measure等性能参数计算了它们的准确率。在本研究中,随机森林分类器的准确率高达94.73%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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