假候选实例检测:生成对抗网络的模糊标签学习

Changchun Li, Ximing Li, Jihong Ouyang, Yiming Wang
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引用次数: 5

摘要

模糊标签学习(Ambiguous Label Learning, ALL)作为一种新兴的弱监督学习范式,旨在从具有模糊监督的训练数据集中归纳预测模型,即每个训练实例都用一组候选标签进行注释,但只有一个是有效的。为了解决这个问题,现有的浅层方法主要是利用各种正则化技术来消除候选标签的歧义。受深度生成对抗网络巨大成功的启发,我们将其应用于从新的实例中心角度进行有效的候选标签消歧。具体来说,对于每个ALL实例,我们将其特征表示与每个候选标签重新组合以生成一组候选实例,其中只有一个是真实的,其他所有都是假的。我们针对三个玩家制定了统一的对抗目标,即判别器、生成器和分类器。鉴别器用于检测虚假的候选实例,以便在没有它们的情况下训练分类器。基于这一见解,我们开发了一种新的ALL方法,即带有候选实例检测的对抗性模糊标签学习(A2L2CID)。理论上,我们分析三者之间存在一个全局平衡点。经验上,广泛的实验结果表明,A2L2CID优于最先进的ALL方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting the Fake Candidate Instances: Ambiguous Label Learning with Generative Adversarial Networks
Ambiguous Label Learning (ALL), as an emerging paradigm of weakly supervised learning, aims to induce the prediction model from training datasets with ambiguous supervision, where, specifically, each training instance is annotated with a set of candidate labels but only one is valid. To handle this task, the existing shallow methods mainly disambiguate the candidate labels by leveraging various regularization techniques. Inspired by the great success of deep generative adversarial networks, we apply it to perform effective candidate label disambiguation from a new instance-pivoted perspective. Specifically, for each ALL instance, we recombine its feature representation with each of candidate labels to generate a set of candidate instances, where only one is real and all others are fake. We formulate a unified adversarial objective with respect to three players, i.e., a discriminator, a generator, and a classifier. The discriminator is used to detect the fake candidate instances, so that the classifier can be trained without them. With this insight, we develop a novel ALL method, namely Adversarial Ambiguous Label Learning with Candidate Instance Detection (A2L2CID). Theoretically, we analyze that there is a global equilibrium point between the three players. Empirically, extensive experimental results indicate that A2L2CID outperforms the state-of-the-art ALL methods.
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