使用生理信号预测成绩的可穿戴考试压力数据集

Md. Rafiul Amin, D. S. Wickramasuriya, R. Faghih
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引用次数: 4

摘要

在现实情境中对心理压力的研究提出了几个挑战。因此,可供研究人员使用的数据集也很少。我们研究的目的是获取这样一个包含皮肤电导测量的数据集,并用它来预测人类的表现。我们在使用可穿戴设备的三次测试中收集了10名受试者的皮肤电导和皮肤温度数据。我们对皮肤电导信号进行过滤,得到粗粒度的趋势线,然后训练分类器根据趋势线特征预测高低等级。我们在70-80%的范围内获得了最大的分类准确率。我们还得到了表明考试期间压力水平一般变化的平均趋势线。研究结果表明,使用可穿戴设备来预测现实世界压力下的表现是初步可行的。可穿戴式监控呈现出独特的挑战,我们希望这个公开可用的数据集将有助于解决其中的一些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Wearable Exam Stress Dataset for Predicting Grades using Physiological Signals
The study of psychological stress in real-world scenarios presents several challenges. Consequently, datasets available to researchers are also scarce. The aim of our study is to acquire such a dataset containing skin conductance measurements and use it to predict human performance. We collected skin conductance and skin temperature data from 10 subjects during three exams using wearable devices. We filter the skin conductance signals to obtain coarse-grained trendlines and then train classifiers to predict high and low grades based on the trendline features. We obtained maximum classification accuracies in the 70–80% range. We also obtained the mean trendlines indicating the general variation of stress levels during the exams. The findings indicate the preliminary viability of using wearable devices to predict performance during real-world stressors. Wearable monitoring presents unique challenges and it is our hope that this publicly-available dataset will aid in addressing some of them.
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