Imbalanced Classification via Explicit Gradient Learning From Augmented
Data
- URL: http://arxiv.org/abs/2202.10550v1
- Date: Mon, 21 Feb 2022 22:16:50 GMT
- Title: Imbalanced Classification via Explicit Gradient Learning From Augmented
Data
- Authors: Bronislav Yasinnik
- Abstract summary: We propose a novel deep meta-learning technique to augment a given imbalanced dataset with new minority instances.
The advantage of the proposed method is demonstrated on synthetic and real-world datasets with various imbalance ratios.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Learning from imbalanced data is one of the most significant challenges in
real-world classification tasks. In such cases, neural networks performance is
substantially impaired due to preference towards the majority class. Existing
approaches attempt to eliminate the bias through data re-sampling or
re-weighting the loss in the learning process. Still, these methods tend to
overfit the minority samples and perform poorly when the structure of the
minority class is highly irregular. Here, we propose a novel deep meta-learning
technique to augment a given imbalanced dataset with new minority instances.
These additional data are incorporated in the classifier's deep-learning
process, and their contributions are learned explicitly. The advantage of the
proposed method is demonstrated on synthetic and real-world datasets with
various imbalance ratios.
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