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NMF-Based Label Space Factorization for Multi-label Classification

机译:基于NMF的标签空间分解用于多标签分类

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Multi-label classification is a learning task in which each data sample can belong to more than one class. Until now, some methods that are based on reducing the dimensionality of the label space have been proposed. However, these methods have not used specific properties of the label space for this purpose. In this paper, we intend to find a hidden space in which both the input feature vectors and the label vectors are embedded. We propose a modified Non-Negative Matrix Factorization (NMF) method that is suitable for decomposing the label matrix and finding a proper hidden space by a feature-aware approach. We consider that the label matrix is binary and also in this matrix some deserving labels for an instance may not be on (called missing labels). We conduct several experiments and show the superiority of our proposed methods to the state-of-the-art multi- label classification methods.
机译:多标签分类是一项学习任务,其中每个数据样本可以属于一个以上的类。到目前为止,已经提出了一些基于减小标签空间的维数的方法。但是,这些方法没有为此目的使用标签空间的特定属性。在本文中,我们打算找到一个隐藏的空间,将输入特征向量和标签向量都嵌入其中。我们提出了一种改进的非负矩阵分解(NMF)方法,该方法适用于通过特征感知方法分解标签矩阵并找到适当的隐藏空间。我们认为标签矩阵是二进制的,并且在该矩阵中,可能没有打开某个实例中的某些应有标签(称为缺失标签)。我们进行了几次实验,证明了我们提出的方法优于最新的多标签分类方法。

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