Jafarlou Salar, Lai Jocelyn, Azimi Iman, Mousavi Zahra, Labbaf Sina, Jain Ramesh C, Dutt Nikil, Borelli Jessica L, Rahmani Amir
Donald Bren School of Information and Computer Sciences, University of California, Irvine, Irvine, CA, United States.
Department of Psychological Science, University of California, Irvine, Irvine, CA, United States.
JMIR Form Res. 2023 Mar 15;7:e39425. doi: 10.2196/39425.
Affective states are important aspects of healthy functioning; as such, monitoring and understanding affect is necessary for the assessment and treatment of mood-based disorders. Recent advancements in wearable technologies have increased the use of such tools in detecting and accurately estimating mental states (eg, affect, mood, and stress), offering comprehensive and continuous monitoring of individuals over time.
Previous attempts to model an individual's mental state relied on subjective measurements or the inclusion of only a few objective monitoring modalities (eg, smartphones). This study aims to investigate the capacity of monitoring affect using fully objective measurements. We conducted a comparatively long-term (12-month) study with a holistic sampling of participants' moods, including 20 affective states.
Longitudinal physiological data (eg, sleep and heart rate), as well as daily assessments of affect, were collected using 3 modalities (ie, smartphone, watch, and ring) from 20 college students over a year. We examined the difference between the distributions of data collected from each modality along with the differences between their rates of missingness. Out of the 20 participants, 7 provided us with 200 or more days' worth of data, and we used this for our predictive modeling setup. Distributions of positive affect (PA) and negative affect (NA) among the 7 selected participants were observed. For predictive modeling, we assessed the performance of different machine learning models, including random forests (RFs), support vector machines (SVMs), multilayer perceptron (MLP), and K-nearest neighbor (KNN). We also investigated the capability of each modality in predicting mood and the most important features of PA and NA RF models.
RF was the best-performing model in our analysis and performed mood and stress (nervousness) prediction with ~81% and ~72% accuracy, respectively. PA models resulted in better performance compared to NA. The order of the most important modalities in predicting PA and NA was the smart ring, phone, and watch, respectively. SHAP (Shapley Additive Explanations) analysis showed that sleep and activity-related features were the most impactful in predicting PA and NA.
Generic machine learning-based affect prediction models, trained with population data, outperform existing methods, which use the individual's historical information. Our findings indicated that our mood prediction method outperformed the existing methods. Additionally, we found that sleep and activity level were the most important features for predicting next-day PA and NA, respectively.
情感状态是健康机能的重要方面;因此,监测和理解情感对于基于情绪的障碍的评估和治疗是必要的。可穿戴技术的最新进展增加了此类工具在检测和准确估计心理状态(如情感、情绪和压力)方面的使用,能够随着时间对个体进行全面且持续的监测。
先前对个体心理状态进行建模的尝试依赖于主观测量或仅纳入少数客观监测方式(如智能手机)。本研究旨在调查使用完全客观测量来监测情感的能力。我们进行了一项为期相对较长(12个月)的研究,对参与者的情绪进行全面抽样,包括20种情感状态。
使用三种方式(即智能手机、手表和戒指)从20名大学生那里收集了长达一年的纵向生理数据(如睡眠和心率)以及情感的日常评估。我们检查了从每种方式收集的数据分布之间的差异以及它们的缺失率差异。在20名参与者中,7人提供了200天或更多的数据,我们将其用于预测建模设置。观察了7名选定参与者中积极情感(PA)和消极情感(NA)的分布情况。对于预测建模,我们评估了不同机器学习模型的性能,包括随机森林(RF)、支持向量机(SVM)、多层感知器(MLP)和K近邻(KNN)。我们还研究了每种方式预测情绪的能力以及PA和NA随机森林模型的最重要特征。
在我们的分析中,随机森林是表现最佳的模型,其对情绪和压力(紧张)的预测准确率分别约为81%和72%。与消极情感模型相比,积极情感模型表现更佳。预测积极情感和消极情感时最重要方式的顺序分别是智能戒指、手机和手表。SHAP(Shapley值加法解释)分析表明,与睡眠和活动相关的特征在预测积极情感和消极情感时影响最大。
基于通用机器学习的情感预测模型,通过群体数据进行训练,优于使用个体历史信息的现有方法。我们的研究结果表明,我们的情绪预测方法优于现有方法。此外,我们发现睡眠和活动水平分别是预测次日积极情感和消极情感的最重要特征。