Deep reinforcement learning for multi-class imbalanced training: applications in healthcare
With the rapid growth of memory and computing power, datasets are becoming increasingly complex and imbalanced. This is especially severe in the context of clinical data, where there may be one rare event for many cases in the majority class. We introduce an imbalanced classification framework, base...
Main Authors: | Yang, J, El-Bouri, R, O'Donoghue, O, Lachapelle, A, Soltan, AAS, Eyre, DW, Lu, L, Clifton, DA |
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Format: | Journal article |
Language: | English |
Published: |
Springer Nature
2023
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