Sarker Hillol, Sharmin Moushumi, Ali Amin Ahsan, Rahman Md Mahbubur, Bari Rummana, Hossain Syed Monowar, Kumar Santosh
Proc ACM Int Conf Ubiquitous Comput. 2014;2014:909-920. doi: 10.1145/2632048.2636082.
Wearable wireless sensors for health monitoring are enabling the design and delivery of just-in-time interventions (JITI). Critical to the success of JITI is to time its delivery so that the user is available to be engaged. We take a first step in modeling users' availability by analyzing 2,064 hours of physiological sensor data and 2,717 self-reports collected from 30 participants in a week-long field study. We use delay in responding to a prompt to objectively measure availability. We compute 99 features and identify 30 as most discriminating to train a machine learning model for predicting availability. We find that location, affect, activity type, stress, time, and day of the week, play significant roles in predicting availability. We find that users are least available at work and during driving, and most available when walking outside. Our model finally achieves an accuracy of 74.7% in 10-fold cross-validation and 77.9% with leave-one-subject-out.
用于健康监测的可穿戴无线传感器正在推动即时干预(JITI)的设计与实施。JITI成功的关键在于适时提供干预,以便用户能够参与其中。我们通过分析从30名参与者在为期一周的实地研究中收集的2064小时生理传感器数据和2717份自我报告,迈出了对用户可用性进行建模的第一步。我们使用对提示的响应延迟来客观衡量可用性。我们计算了99个特征,并确定其中30个最具区分性,以训练一个用于预测可用性的机器学习模型。我们发现,位置、情感、活动类型、压力、时间和星期几在预测可用性方面发挥着重要作用。我们发现用户在工作和开车时可用性最低,而在户外行走时可用性最高。我们的模型在10折交叉验证中最终达到了74.7%的准确率,在留一法交叉验证中达到了77.9%的准确率。