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Mining Minority-class Examples With Uncertainty Estimates

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arxiv 2112.07835 v1 pith:BCNLGKVZ submitted 2021-12-15 cs.CV cs.AI

Mining Minority-class Examples With Uncertainty Estimates

classification cs.CV cs.AI
keywords examplesminingtail-classapproachclassframeworkminority-classperformance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the real world, the frequency of occurrence of objects is naturally skewed forming long-tail class distributions, which results in poor performance on the statistically rare classes. A promising solution is to mine tail-class examples to balance the training dataset. However, mining tail-class examples is a very challenging task. For instance, most of the otherwise successful uncertainty-based mining approaches struggle due to distortion of class probabilities resulting from skewness in data. In this work, we propose an effective, yet simple, approach to overcome these challenges. Our framework enhances the subdued tail-class activations and, thereafter, uses a one-class data-centric approach to effectively identify tail-class examples. We carry out an exhaustive evaluation of our framework on three datasets spanning over two computer vision tasks. Substantial improvements in the minority-class mining and fine-tuned model's performance strongly corroborate the value of our proposed solution.

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