Wearables to detect independent variables, objective task performance, and metacognitive states

Matthew S. Daley , Jeffrey B. Bolkhovsky , Rachel Markwald , Timothy Dunn
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Abstract

Wearable biometric tracking devices are becoming increasingly common, providing users with physiological metrics such as heart rate variability (HRV) and skin conductance. We hypothesize that these metrics can be used as inputs for machine learning models to detect independent variables, such as target prevalence or hours awake, objective task performance, and metacognitive states. Over the course of 1–25 h awake, 40 participants completed four sessions of a simulated mine hunting task while non-invasive wearables collected physiological and behavioral data. The collected data were used to generate multiple machine learning models to detect the independent variables of the experiment (e.g., time awake and target prevalence), objective task performance, or metacognitive states. The strongest generated model was the time awake detection model (area under the curve = 0.92). All other models performed much closer to chance (area under the curve = 0.57–0.66), suggesting the model architecture used in this paper can detect time awake but falls short in other domains.

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检测自变量、客观任务绩效和元认知状态的可穿戴设备
可穿戴生物识别跟踪设备越来越常见,可为用户提供心率变异性(HRV)和皮肤电导率等生理指标。我们假设这些指标可用作机器学习模型的输入,以检测自变量,如目标发生率或清醒时数、客观任务表现和元认知状态。在 1-25 小时的清醒过程中,40 名参与者完成了四次模拟猎雷任务,同时无创可穿戴设备收集了生理和行为数据。收集到的数据被用于生成多个机器学习模型,以检测实验的自变量(如清醒时间和目标发生率)、客观任务表现或元认知状态。生成的最强模型是清醒时间检测模型(曲线下面积 = 0.92)。所有其他模型的表现都更接近于偶然性(曲线下面积 = 0.57-0.66),这表明本文中使用的模型架构可以检测出时间清醒,但在其他领域却有不足。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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审稿时长
98 days
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