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Improving Dataset Volumes and Model Accuracy With Semi-Supervised Iterative Self-Learning

机译:半监督迭代自学改进数据集卷和模型准确性

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摘要

Within this paper, a novel semi-supervised learning technique is introduced based on a simple iterative learning cycle together with learned thresholding techniques and an ensemble decision support system. The state-of-the-art model performance and increased training data volume are demonstrated through the use of unlabeled data when training deeply learned classification models. The methods presented work independently from the model architectures or loss functions, making this approach applicable to a wide range of machine learning and classification tasks. Evaluation of the proposed approach is performed on commonly used datasets when evaluating semi-supervised learning techniques and a number of more challenging image classification datasets (CIFAR-100 and a 200 class subset of ImageNet).
机译:在本文中,基于简单的迭代学习周期引入了一种新颖的半监督学习技术,以及学习的阈值技术和集合决策支持系统。通过在培训深度学习分类模型时,通过使用未标记的数据来证明最先进的模型性能和增加的训练数据量。该方法独立于模型架构或损耗功能呈现了工作,使得这种方法适用于各种机器学习和分类任务。在评估半监督学习技术的常用数据集和许多更具有挑战性的图像分类数据集(CIFAR-100和200级想象群子集)时,对所提出的方法进行评估。

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