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Toward Fusing Domain Knowledge with Generative Adversarial Networks to Improve Supervised Learning for Medical Diagnoses

机译:将领域知识与对抗性网络融合以改善医学诊断的监督学习

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This paper addresses the challenges of small training data in deep learning. We share our experiences in the medical domain and present promises and limitations. In particular, we show through experimental results that GANs are ineffective in generating quality training data to improve supervised learning. We suggest plausible research directions to remedy the problems.
机译:本文解决了深度学习中小型训练数据的挑战。我们分享我们在医学领域的经验,并提出希望和局限。特别是,我们通过实验结果表明,GAN在生成高质量的训练数据以改善监督学习方面无效。我们建议合理的研究方向来解决这些问题。

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