1 research outputs found
Biasing & Debiasing based Approach Towards Fair Knowledge Transfer for Equitable Skin Analysis
Deep learning models, particularly Convolutional Neural Networks (CNNs), have
demonstrated exceptional performance in diagnosing skin diseases, often
outperforming dermatologists. However, they have also unveiled biases linked to
specific demographic traits, notably concerning diverse skin tones or gender,
prompting concerns regarding fairness and limiting their widespread deployment.
Researchers are actively working to ensure fairness in AI-based solutions, but
existing methods incur an accuracy loss when striving for fairness. To solve
this issue, we propose a `two-biased teachers' (i.e., biased on different
sensitive attributes) based approach to transfer fair knowledge into the
student network. Our approach mitigates biases present in the student network
without harming its predictive accuracy. In fact, in most cases, our approach
improves the accuracy of the baseline model. To achieve this goal, we developed
a weighted loss function comprising biasing and debiasing loss terms. We
surpassed available state-of-the-art approaches to attain fairness and also
improved the accuracy at the same time. The proposed approach has been
evaluated and validated on two dermatology datasets using standard accuracy and
fairness evaluation measures. We will make source code publicly available to
foster reproducibility and future research
