基于办公室工作行为的感知压力水平识别的无监督学习方法

Worawat Lawanont, M. Inoue
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引用次数: 4

摘要

办公人员在工作环境和工作行为方面的健康问题引起了医学界和科技界的广泛关注。在医疗领域,由于恶劣的工作环境或不良的工作行为而造成的身体伤害和压力是令人担忧的。在技术领域,主要关注的是找到一个适当的解决办法来预防和提高对这些问题的认识。本文探讨了利用无监督学习对办公室工作行为进行聚类的可能性,以显示工作行为与压力水平的关系。我们使用了从设备收集的数据,包括行为数据和环境数据。结果成功地证明了两个集群代表工作行为相关的高或低压力水平。研究结果可以进一步用于开发分类模型,并提高上班族的认识。
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An unsupervised learning method for perceived stress level recognition based on office working behavior
The health issues in office workers regarding of working environment and working behavior have raised many concerns, both in medical field and technological field. For medical field, the concerns were related to physical injuries and stress due to either bad environment or bad working behaviors. In technological field, the main concern was to find a proper solution to prevent and raise awareness to these issues. In this paper, we discussed the possibility of using unsupervised learning for clustering office working behavior to show the relationship of the working behavior and stress level. We used the data collected from the device which include both behavior data and environment data. The results successfully demonstrated the two clusters that represents the working behavior related to either high or low stress level. The results can be used further to develop a classification model and to raise awareness in office workers.
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