An adversarial training framework for mitigating algorithmic biases in clinical machine learning
<p>Machine learning is becoming increasingly prominent in healthcare. Although its benefits are clear, growing attention is being given to how these tools may exacerbate existing biases and disparities. In this study, we introduce an adversarial training framework that is capable of mitigating...
Những tác giả chính: | Yang, J, Soltan, AAS, Eyre, DW, Yang, Y, Clifton, DA |
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Định dạng: | Journal article |
Ngôn ngữ: | English |
Được phát hành: |
Springer Nature
2023
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