论文标题

网络合作与部分标签学习的渐进歧义

Network Cooperation with Progressive Disambiguation for Partial Label Learning

论文作者

Yao, Yao, Gong, Chen, Deng, Jiehui, Yang, Jian

论文摘要

部分标签学习(PLL)旨在当每个培训实例与一组候选标签相关联时,旨在培训分类器,其中只有一个是正确的,但在培训阶段无法访问。处理此类含糊标签信息的常见策略是消除候选标签集的歧义。但是,现有方法忽略了实例的歧义难度,并采用了单一趋势培训机制。前者将导致模型对假阳性标签的脆弱性,后者可能会引起错误积累问题。为了解决这两个缺点,本文提出了一种新颖的方法,称为PLL的“与渐进式歧义的网络合作”(NCPD)。具体来说,我们设计了一种渐进的歧义策略,该策略首先在简单的实例上进行歧义操作,然后在更复杂的实例上逐渐进行。因此,由于复杂实例的假阳性标签带来的负面影响可以有效地减轻,因为该模型的歧义能力已通过从简单实例中学习增强。此外,通过使用人工神经网络作为骨干,我们利用了一种网络合作机制,该机制通过让它们相互互动来协作训练两个网络。由于两个网络具有不同的歧义能力,因此这种相互作用对两个网络减少各自的歧义错误都是有益的,因此比现有的单趋势培训过程的现有算法要好得多。各种基准和实际数据集的广泛实验结果证明了我们的NCPD对其他最先进的PLL方法的优越性。

Partial Label Learning (PLL) aims to train a classifier when each training instance is associated with a set of candidate labels, among which only one is correct but is not accessible during the training phase. The common strategy dealing with such ambiguous labeling information is to disambiguate the candidate label sets. Nonetheless, existing methods ignore the disambiguation difficulty of instances and adopt the single-trend training mechanism. The former would lead to the vulnerability of models to the false positive labels and the latter may arouse error accumulation problem. To remedy these two drawbacks, this paper proposes a novel approach termed "Network Cooperation with Progressive Disambiguation" (NCPD) for PLL. Specifically, we devise a progressive disambiguation strategy of which the disambiguation operations are performed on simple instances firstly and then gradually on more complicated ones. Therefore, the negative impacts brought by the false positive labels of complicated instances can be effectively mitigated as the disambiguation ability of the model has been strengthened via learning from the simple instances. Moreover, by employing artificial neural networks as the backbone, we utilize a network cooperation mechanism which trains two networks collaboratively by letting them interact with each other. As two networks have different disambiguation ability, such interaction is beneficial for both networks to reduce their respective disambiguation errors, and thus is much better than the existing algorithms with single-trend training process. Extensive experimental results on various benchmark and practical datasets demonstrate the superiority of our NCPD to other state-of-the-art PLL methods.

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