IEEE Trans Pattern Anal Mach Intell. 2022 Dec;44(12):8796-8811. doi: 10.1109/TPAMI.2021.3120012. Epub 2022 Nov 7.
In partial label learning, a multi-class classifier is learned from the ambiguous supervision where each training example is associated with a set of candidate labels among which only one is valid. An intuitive way to deal with this problem is label disambiguation, i.e., differentiating the labeling confidences of different candidate labels so as to try to recover ground-truth labeling information. Recently, feature-aware label disambiguation has been proposed which utilizes the graph structure of feature space to generate labeling confidences over candidate labels. Nevertheless, the existence of noises and outliers in training data makes the graph structure derived from original feature space less reliable. In this paper, a novel partial label learning approach based on adaptive graph guided disambiguation is proposed, which is shown to be more effective in revealing the intrinsic manifold structure among training examples. Other than the sequential disambiguation-then-induction learning strategy, the proposed approach jointly performs adaptive graph construction, candidate label disambiguation and predictive model induction with alternating optimization. Furthermore, we consider the particular human-in-the-loop framework in which a learner is allowed to actively query some ambiguously labeled examples for manual disambiguation. Extensive experiments clearly validate the effectiveness of adaptive graph guided disambiguation for learning from partial label examples.
在部分标签学习中,从模糊监督中学习多类分类器,其中每个训练示例都与候选标签集相关联,其中只有一个是有效的。处理这个问题的一种直观方法是标签去歧义,即区分不同候选标签的标注置信度,以尝试恢复真实标注信息。最近,提出了基于特征感知的标签去歧义方法,它利用特征空间的图结构来生成候选标签上的标注置信度。然而,训练数据中的噪声和异常值的存在使得从原始特征空间中得到的图结构不太可靠。在本文中,提出了一种新的基于自适应图引导去歧义的部分标签学习方法,该方法被证明在揭示训练示例之间的内在流形结构方面更有效。与顺序去歧义-然后归纳学习策略不同,所提出的方法通过交替优化联合执行自适应图构建、候选标签去歧义以及预测模型归纳。此外,我们考虑了允许学习者主动查询一些模糊标记示例进行手动去歧义的特定人机交互框架。广泛的实验清楚地验证了自适应图引导去歧义在部分标签示例学习中的有效性。