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Baloch et al., 2019 - Google Patents

Focused anchors loss: Cost-sensitive learning of discriminative features for imbalanced classification

Baloch et al., 2019

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Document ID
3742755494450683725
Author
Baloch B
Kumar S
Haresh S
Rehman A
Syed T
Publication year
Publication venue
Asian Conference on Machine Learning

External Links

Snippet

Abstract Deep Neural Networks (DNNs) usually suffer performance penalties when there is a skewed label distribution. This phenomenon, class-imbalance, is most often mitigated peripheral to the classification algorithm itself, usually by modifying the amount of examples …
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