Rachel Pfeifer, Sudip Vhaduri, Mark Wilson, Julius Keller
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Toward Mitigating Sex Bias in Pilot Trainees' Stress and Fatigue Modeling
While researchers have been trying to understand the stress and fatigue among
pilots, especially pilot trainees, and to develop stress/fatigue models to
automate the process of detecting stress/fatigue, they often do not consider
biases such as sex in those models. However, in a critical profession like
aviation, where the demographic distribution is disproportionately skewed to
one sex, it is urgent to mitigate biases for fair and safe model predictions.
In this work, we investigate the perceived stress/fatigue of 69 college
students, including 40 pilot trainees with around 63% male. We construct models
with decision trees first without bias mitigation and then with bias mitigation
using a threshold optimizer with demographic parity and equalized odds
constraints 30 times with random instances. Using bias mitigation, we achieve
improvements of 88.31% (demographic parity difference) and 54.26% (equalized
odds difference), which are also found to be statistically significant.