A self-supervised deep learning method for data-efficient training in genomics

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Abstract

Abstract While deep learning is frequently applied in bioinformatics, it is mostly limited to problems where huge amounts of labeled data are present to train a classifier in a supervised manner. Here, we introduce Self-GenomeNet– a method that utilizes unlabeled genomic data to address the challenge of limited data availability through self-training, outperforming the standard supervised training, even when using ~10 times less labeled data.

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last seen: 2026-05-19T01:45:01.086888+00:00