Monitoring and understanding affective states are important aspects of healthy functioning and treatment of mood-based disorders. Recent advancements of ubiquitous wearable technologies have increased the reliability of such tools in detecting and accurately estimating mental states (e.g., mood, stress, etc.), offering comprehensive and continuous monitoring of individuals over time. Previous attempts to model an individual's mental state were limited to subjective approaches or the inclusion of only a few modalities (i.e., phone, watch). Thus, the goal of our study was to investigate the capacity to more accurately predict affect through a fully automatic and objective approach using multiple commercial devices. Longitudinal physiological data and daily assessments of emotions were collected from a sample of college students using smart wearables and phones for over a year. Results showed that our model was able to predict next-day affect with accuracy comparable to state of the art methods.
翻译:监测和理解感官状态是健康运作和治疗情绪性障碍的重要方面。最近,无处不在的磨损技术的进步提高了这些工具的可靠性,以探测和准确估计精神状态(如情绪、压力等),对长期的个人进行全面和持续的监测。以前模拟个人精神状态的尝试仅限于主观方法,或只包括几种方式(如电话、手表)。因此,我们的研究目标是调查通过使用多种商业装置的完全自动和客观的方法更准确地预测影响的能力。从使用智能磨损器和电话的大学生抽样中收集了一年多的纵向生理数据和日常情绪评估。结果显示,我们的模型能够预测下天的影响,准确性与艺术方法的状态相近。