利用机器学习预测技术和非技术公司员工的心理健康障碍

R. Katarya, S. Maan
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引用次数: 10

摘要

心理健康一直是一个重要而具有挑战性的问题,特别是对工作的专业人员而言。随着时间的推移,现代化(忙碌)的生活方式和工作量对人们造成了伤害,使他们更容易患上情绪障碍和焦虑症等精神障碍。因此,职业专业人员出现心理健康问题的风险增加。为了解决这个问题,行业为员工提供心理健康激励,但这还不足以解决这个问题。在本文中,我们利用了2019年心理健康调查的数据,其中包含了科技公司和非科技公司员工的工作专业人员的数据。我们对数据进行处理,以找到影响员工心理健康的特征或有助于预测员工心理健康的特征,这些特征可以是个人的,也可以是专业的。我们使用多种机器学习算法来寻找具有最佳精度的模型。我们以准确率和召回率作为度量来检验不同机器学习模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Mental health disorders using Machine Learning for employees in technical and non-technical companies
mental health has always been an important and challenging issue, especially in the case of working Professionals. The modernized (hectic) lifestyle and workload take a toll over people over time making them more prone to mental disorders like mood disorder and anxiety disorder. Thus, the risk mental health problems increase in working professionals. To deal with this problem industries provide mental health care incentives to their employees, but it is not enough to deal with the problem. In this paper, we utilize the data from mental health survey 2019 that contains the data of working professionals for both tech and non-tech company employees. We process data to find the features influencing the mental health of employees or features that can help to predict the mental health of the employee the feature can be either personal or professional. We apply multiple machine learning algorithms to find the model with the best accuracy. We take precision and recall as the measure to check the performance of different ML models.
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