Pseudo-Feature Generation for Imbalanced Data Analysis in Deep Learning

Konno, Tomohiko, Iwazume, Michiaki

arXiv.org Artificial Intelligence 

We generate pseudo-features by multivariate probability distributions obtained from feature maps in a low layer of trained deep neural networks. Then, we virtually augment the data of minor classes by the pseudo-features in order to overcome imbalanced data problems.

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