使用可穿戴和机器学习的特征提取工具包生成多模态数据集:试点研究

Edwin Marte Zorrilla, I. Villanueva, J. Husman, Matthew C. Graham
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引用次数: 0

摘要

用多模态传感器测量压力和学生表现的研究已成为研究教育工作者最近讨论的话题。随着计算硬件的进步和机器学习策略的使用,学者们现在可以处理高维数据,并为未来的研究设计提供一种预测新估计的方法。本文介绍了从可穿戴设备生成和获得包括生理测量(例如,皮肤电活动- EDA)在内的多模态数据集的过程。通过使用可穿戴数据特征生成工具包,减少了提取干净数据和生成数据的时间。开发了一个来自公开可用的多模态数据集的机器学习模型,并将结果与先前的研究进行比较,以评估这些方法和工具的效用。关键词:工程教育,生理传感,学生表现,机器学习,多模态,FLIRT, WESAD
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating a Multimodal Dataset Using a Feature Extraction Toolkit for Wearable and Machine Learning: A pilot study
Studies for stress and student performance with multimodal sensor measurements have been a recent topic of discussion among research educators. With the advances in computational hardware and the use of Machine learning strategies, scholars can now deal with data of high dimensionality and provide a way to predict new estimates for future research designs. In this paper, the process to generate and obtain a multimodal dataset including physiological measurements (e.g., electrodermal activity- EDA) from wearable devices is presented. Through the use of a Feature Generation Toolkit for Wearable Data, the time to extract clean and generate the data was reduced. A machine learning model from an openly available multimodal dataset was developed and results were compared against previous studies to evaluate the utility of these approaches and tools. Keywords: Engineering Education, Physiological Sensing, Student Performance, Machine Learning, Multimodal, FLIRT, WESAD
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