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Partial Label Learning with Self-Guided Retraining

机译:部分标签学习与自我导向刷新

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Partial label learning deals with the problem where each training instance is assigned a set of candidate labels, only one of which is correct. This paper provides the first attempt to leverage the idea of self-training for dealing with partially labeled examples. Specifically, we propose a unified formulation with proper constraints to train the desired model and perform pseudo-labeling jointly. For pseudo-labeling, unlike traditional self-training that manually differentiates the ground-truth label with enough high confidence, we introduce the maximum infinity norm regularization on the modeling outputs to automatically achieve this consideratum, which results in a convex-concave optimization problem. We show that optimizing this convex-concave problem is equivalent to solving a set of quadratic programming (QP) problems. By proposing an upper-bound surrogate objective function, we turn to solving only one QP problem for improving the optimization efficiency. Extensive experiments on synthesized and real-world datasets demonstrate that the proposed approach significantly outperforms the state-of-the-art partial label learning approaches.
机译:部分标签学习处理每个训练实例为一组候选标签分配了一个问题,其中一个只有一个是正确的。本文提供了第一次利用自我培训的想法,以便处理部分标记的例子。具体地,我们提出了一种统一的制定,具有适当的约束来训练所需的模型并共同执行伪标记。对于伪标签,与传统的自我训练不同,手动将地面真值标签与足够的高度置信区分,我们在建模输出上引入最大无限常态正则化,以自动实现此类大量,这导致凸凹面的优化问题。我们表明优化该凸凹面问题相当于解决一组二次编程(QP)问题。通过提出上限替代客观函数,我们只能解决一个QP问题,以提高优化效率。对合成和现实世界数据集的广泛实验表明,所提出的方法显着优于最先进的部分标签学习方法。

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