Wang Zhiyuan, Larrazabal Maria A, Rucker Mark, Toner Emma R, Daniel Katharine E, Kumar Shashwat, Boukhechba Mehdi, Teachman Bethany A, Barnes Laura E
Department of Systems and Information Engineering, University of Virginia, USA.
Department of Psychology, University of Virginia, USA.
Proc ACM Interact Mob Wearable Ubiquitous Technol. 2023 Sep;7(3). doi: 10.1145/3610916. Epub 2023 Sep 27.
Mobile sensing is a ubiquitous and useful tool to make inferences about individuals' mental health based on physiology and behavior patterns. Along with sensing features directly associated with mental health, it can be valuable to detect different features of social contexts to learn about social interaction patterns over time and across different environments. This can provide insight into diverse communities' academic, work and social lives, and their social networks. We posit that passively detecting social contexts can be particularly useful for social anxiety research, as it may ultimately help identify changes in social anxiety status and patterns of social avoidance and withdrawal. To this end, we recruited a sample of highly socially anxious undergraduate students (N=46) to examine whether we could detect the presence of experimentally manipulated virtual social contexts via wristband sensors. Using a multitask machine learning pipeline, we leveraged passively sensed biobehavioral streams to detect contexts relevant to social anxiety, including (1) whether people were in a social situation, (2) size of the social group, (3) degree of social evaluation, and (4) phase of social situation (anticipating, actively experiencing, or had just participated in an experience). Results demonstrated the feasibility of detecting most virtual social contexts, with stronger predictive accuracy when detecting whether individuals were in a social situation or not and the phase of the situation, and weaker predictive accuracy when detecting the level of social evaluation. They also indicated that sensing streams are differentially important to prediction based on the context being predicted. Our findings also provide useful information regarding design elements relevant to passive context detection, including optimal sensing duration, the utility of different sensing modalities, and the need for personalization. We discuss implications of these findings for future work on context detection (e.g., just-in-time adaptive intervention development).
移动传感是一种普遍存在且有用的工具,可根据生理和行为模式对个体的心理健康进行推断。除了与心理健康直接相关的传感特征外,检测社会环境的不同特征以了解不同时间和不同环境下的社会互动模式也很有价值。这可以洞察不同社区的学术、工作和社交生活以及他们的社交网络。我们认为,被动检测社会环境对于社交焦虑研究可能特别有用,因为它最终可能有助于识别社交焦虑状态的变化以及社交回避和退缩模式。为此,我们招募了一组社交焦虑程度较高的本科生样本(N = 46),以研究我们是否能够通过腕带传感器检测到实验操纵的虚拟社会环境的存在。使用多任务机器学习管道,我们利用被动感知的生物行为流来检测与社交焦虑相关的环境,包括(1)人们是否处于社交情境中,(2)社交群体的规模,(3)社会评价的程度,以及(4)社交情境的阶段(预期、积极体验或刚刚参与过一次体验)。结果表明,检测大多数虚拟社会环境是可行的,在检测个体是否处于社交情境以及情境阶段时预测准确率更高,而在检测社会评价水平时预测准确率较低。结果还表明,根据被预测的环境,传感流对预测的重要性各不相同。我们的研究结果还提供了与被动环境检测相关的设计元素的有用信息,包括最佳传感持续时间、不同传感方式的效用以及个性化的必要性。我们讨论了这些发现对未来环境检测工作(例如即时自适应干预开发)的影响。