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Stress Detection in Computer Users From Keyboard and Mouse Dynamics

机译:键盘和鼠标动态计算机用户的压力检测

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摘要

Detecting stress in computer users, while technically challenging, is of the utmost importance in the workplace, especially now that remote working scenarios are becoming ubiquitous. In this context, cost-effective, subject-independent systems are needed that can be embedded in consumer devices and classify users' stress in a reliable and unobtrusive fashion. Leveraging keyboard and mouse dynamics is particularly appealing in this context as it exploits readily available sensors. However, available studies are mostly performed in laboratory conditions, and there is a lack of on-field investigations in closer-to-real-world settings. In this study, keyboard and mouse data from 62 volunteers were experimentally collected in-the-wild using a purpose-built Web application, designed to induce stress by asking each subject to perform 8 computer tasks under different stressful conditions. The application of Multiple Instance Learning (MIL) to Random Forest (RF) classification allowed the devised system to successfully distinguish 3 stress-level classes from keyboard (76% accuracy) and mouse (63% accuracy) data. Classifiers were further evaluated via confusion matrix, precision, recall, and F1-score.
机译:在计算机用户中检测压力,虽然在技术上具有挑战性,在工作场所最重要,特别是现在遥控工作场景正在变得无处不在。在这种情况下,需要具有成本效益的主题的主题系统,可以嵌入在消费者设备中,并以可靠和不引人注目的方式对用户的压力进行分类。在此上下文中,利用键盘和鼠标动态特别吸引人,因为它利用易于使用的传感器。然而,可用的研究主要在实验室条件下进行,并且在近距离对现实世界的环境中缺乏现场调查。在本研究中,使用62个志愿者的键盘和鼠标数据使用目的内置的Web应用程序实验地收集,旨在通过询问每个主题在不同的压力条件下执行8个计算机任务来引起压力。多实例学习(MIL)到随机林(RF)分类的应用允许设计的系统从键盘(76%精度)和鼠标(63%精度)数据中成功区分3个压力级别类别。通过混乱矩阵,精度,召回和F1分数进一步评估分类器。

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