2023
DOI: 10.48550/arxiv.2303.08325
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FairAdaBN: Mitigating unfairness with adaptive batch normalization and its application to dermatological disease classification

Abstract: Deep learning is becoming increasingly ubiquitous in medical research and applications while involving sensitive information and even critical diagnosis decisions. Researchers observe a significant performance disparity among subgroups with different demographic attributes, which is called model unfairness, and put lots of effort into carefully designing elegant architectures to address unfairness, which poses heavy training burden, brings poor generalization, and reveals the trade-off between model performanc… Show more

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References 23 publications
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