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Partial Multi-Label Learning by Low-Rank and Sparse Decomposition

机译:低级和稀疏分解的部分多标签学习

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Multi-Label Learning (MLL) aims to learn from the training data where each example is represented by a single instance while associated with a set of candidate labels. Most existing MLL methods are typically designed to handle the problem of missing labels. However, in many real-world scenarios, the labeling information for multi-label data is always redundant, which can not be solved by classical MLL methods, thus a novel Partial Multi-label Learning (PML) framework is proposed to cope with such problem, i.e. removing the the noisy labels from the multi-label sets. In this paper, in order to further improve the denoising capability of PML framework, we utilize the low-rank and sparse decomposition scheme and propose a novel Partial Multi-label Learning by Low-Rank and Sparse decomposition (PML-LRS) approach. Specifically, we first reformulate the observed label set into a label matrix, and then decompose it into a ground-truth label matrix and an irrelevant label matrix, where the former is constrained to be low rank and the latter is assumed to be sparse. Next, we utilize the feature mapping matrix to explore the label correlations and meanwhile constrain the feature mapping matrix to be low rank to prevent the proposed method from being overfitting. Finally, we obtain the ground-truth labels via minimizing the label loss, where the Augmented Lagrange Multiplier (ALM) algorithm is incorporated to solve the optimization problem. Enormous experimental results demonstrate that PML-LRS can achieve superior or competitive performance against other state-of-the-art methods.
机译:多标签学习(MLL)旨在从训练数据中学习,其中每个示例由单个实例表示,同时与一组候选标签相关联。大多数现有的MLL方法通常是为了处理缺少标签的问题。然而,在许多真实世界场景中,多标签数据的标签信息总是冗余的,这不能通过经典MLL方法来解决,因此提出了一种新的部分多标签学习(PML)框架来应对这样的问题,即从多标签集中删除噪声标签。在本文中,为了进一步提高PML框架的去噪能力,我们利用低秩和稀疏分解方案,并通过低级和稀疏分解(PML-LRS)方法提出新的部分多标签学习。具体地,我们首先将观察到的标签设置为标签矩阵,然后将其分解为地面真值标签矩阵和无关标签矩阵,其中前者被约束为低等级,并且假设后者被认为是稀疏的。接下来,我们利用特征映射矩阵来探索标签相关性,同时限制特征映射矩阵为低秩,以防止所提出的方法过度拟合。最后,我们通过最小化标签丢失来获得地面真理标签,其中包含增强拉格朗日乘法器(ALM)算法来解决优化问题。巨大的实验结果表明,PML-LRS可以针对其他最先进的方法实现优异的或竞争性能。

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