Authors
Fateme Nikseresht, Runze Yan, Rachel Lew, Yingzheng Liu, Rose M Sebastian, Afsaneh Doryab
Publication date
2021
Conference
Advances in Usability, User Experience, Wearable and Assistive Technology: Proceedings of the AHFE 2021 Virtual Conferences on Usability and User Experience, Human Factors and Wearable Technologies, Human Factors in Virtual Environments and Game Design, and Human Factors and Assistive Technology, July 25-29, 2021, USA
Pages
59-66
Publisher
Springer International Publishing
Description
Despite the evolution of norms and regulations to mitigate the harm from biases, harmful discrimination linked to an individual’s unconscious biases persists. Our goal is to better understand and detect the physiological and behavioral indicators of implicit biases. This paper investigates whether we can reliably detect racial bias from physiological responses, including heart rate, conductive skin response, skin temperature, and micro-body movements. We analyzed data from 46 subjects whose physiological data was collected with Empatica E4 wristband while taking an Implicit Association Test (IAT). Our machine learning and statistical analysis show that implicit bias can be predicted from physiological signals with 76.1% accuracy. Our results also show that the EDA signal associated with skin response has the strongest correlation with racial bias and that there are significant differences between the …
Total citations
2023202421
Scholar articles
F Nikseresht, R Yan, R Lew, Y Liu, RM Sebastian… - Advances in Usability, User Experience, Wearable and …, 2021