Inferring human mental state (e.g., emotion, depression, engagement) with sensing technology is one of the most valuable challenges in the affective computing area, which has a profound impact in all industries interacting with humans. The self-report survey is the most common way to quantify how people think, but prone to subjectivity and various responses bias. It is usually used as the ground truth for human mental state prediction. In recent years, many data-driven machine learning models are built based on self-report annotations as the target value. In this research, we investigate the reliability of self-report surveys in the wild by studying the confidence level of responses and survey completion time. We conduct a case study (i.e., student engagement inference) by recruiting 23 students in a high school setting over a period of 4 weeks. Our participants volunteered 488 self-reported responses and data from their wearable sensors. We also find the physiologically measured student engagement and perceived student engagement are not always consistent. The findings from this research have great potential to benefit future studies in predicting engagement, depression, stress, and other emotion-related states in the field of affective computing and sensing technologies.
翻译:自我报告调查是量化人们的思维方式、但容易主观性和各种反应偏差的最常见方式,通常被用作人类精神状态预测的基础事实。近年来,许多数据驱动的机器学习模型建立在自我报告说明的基础上,作为目标价值。在这项研究中,我们通过研究答复的可信度和调查完成时间来调查野外自报调查的可靠性。我们开展了一项案例研究(即学生参与推断),在4周的时间内在高中招聘了23名学生。我们的参与者自愿提供了488份自报反应和来自其磨损感应器的数据。我们还发现,经过生理测量的学生参与和认为的学生参与并不总是一致。在预测参与、抑郁症、压力和其他与情感有关的状态方面的未来研究中,这一研究的结果具有巨大的潜力。