Investigating the Reliability of Self-report Survey in the Wild: The Quest for Ground Truth

07/01/2021
by   Nan Gao, et al.
0

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.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/09/2020

n-Gage: Predicting in-class Emotional, Behavioural and Cognitive Engagement in the Wild

The study of student engagement has attracted growing interests to addre...
research
05/23/2023

Embrace Opportunities and Face Challenges: Using ChatGPT in Undergraduate Students' Collaborative Interdisciplinary Learning

ChatGPT, launched in November 2022, has gained widespread attention from...
research
09/30/2022

Automatic Context-Driven Inference of Engagement in HMI: A Survey

An integral part of seamless human-human communication is engagement, th...
research
01/07/2020

The Ground Truth Trade-Off in Wearable Sensing Studies

Perez et al's study using the Apple Watch to identify atrial fibrillatio...
research
05/14/2021

Understanding occupants' behaviour, engagement, emotion, and comfort indoors with heterogeneous sensors and wearables

We conducted a field study at a K-12 private school in the suburbs of Me...
research
12/19/2018

Automatic Classifiers as Scientific Instruments: One Step Further Away from Ground-Truth

Automatic detectors of facial expression, gesture, affect, etc., can ser...
research
08/31/2016

Engagement Detection in Meetings

Group meetings are frequent business events aimed to develop and conduct...

Please sign up or login with your details

Forgot password? Click here to reset