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Bridging Ordinary-Label Learning and Complementary-Label Learning

机译:桥接普通标签学习和互补标签学习

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A supervised learning framework has been proposed for the situation where each trainingdata is provided with a complementary label that represents a class to which the pattern does not belong. In the existing literature, complementary-label learning has been studied independently from ordinary-label learning, which assumes that each training data is provided with a label representing the class to which the pattern belongs. However, providing a complementary label should be treated as equivalent to providing the rest of all the labels as the candidates of the one true class. In this paper, we focus on the fact that the loss functions for one-versus-all and pairwise classification corresponding to ordinary-label learning and complementary-label learning satisfy certain additivity and duality, and provide a framework which directly bridge those existing supervised learning frameworks. Further, we derive classification risk and error bound for any loss functions which satisfy additivity and duality.
机译:已经提出了一个监督的学习框架,其中包括每个TrainingData的情况提供了一个代表模式不属于的类的互补标签。在现有文献中,已经独立于普通标签学习研究了互补标签学习,这假设每个训练数据都提供了表示模式所属的类的标签。然而,提供互补标签应该被视为等同于提供所有标签的其余标签作为一个真正课程的候选者。在本文中,我们专注于与普通标签学习和互补标签学习相对应的一体化和成对分类的损失函数满足某些添加性和二元性,并提供了一种直接桥接那些现有监督学习的框架构架。此外,我们推导出对满足添加性和二元性的任何损失函数的分类风险和错误。

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