2022
DOI: 10.48550/arxiv.2210.01520
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CLINICAL: Targeted Active Learning for Imbalanced Medical Image Classification

Abstract: Training deep learning models on medical datasets that perform well for all classes is a challenging task. It is often the case that a suboptimal performance is obtained on some classes due to the natural class imbalance issue that comes with medical data. An effective way to tackle this problem is by using targeted active learning, where we iteratively add data points that belong to the rare classes, to the training data. However, existing active learning methods are ineffective in targeting rare classes in m… Show more

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