2021
DOI: 10.48550/arxiv.2112.01718
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Improving Predictions of Tail-end Labels using Concatenated BioMed-Transformers for Long Medical Documents

Abstract: Multi-label learning predicts a subset of labels from a given label set for an unseen instance while considering label correlations. A known challenge with multi-label classification is the long-tailed distribution of labels. Many studies focus on improving the overall predictions of the model and thus do not prioritise tail-end labels. Improving the tail-end label predictions in multi-label classifications of medical text enables the potential to understand patients better and improve care. The knowledge gain… Show more

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