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Learning Label-Specific Features for Multi-Label Classification with Missing Labels

机译:学习带有标签的多标签分类的标签特定功能

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Existing multi-label learning approaches mainly assume that all the class labels are observed for all the training examples, and utilize an identical data representation composed of all the features in the discrimination of all the labels. However, in multi-label learning, each class label might be determined by some specific features of its own, and only a partial label set for each example can be obtained in many applications. This paper propose a new method to learn Label-Specific features for multi-label classification with Missing Labels, named LSML. First, we learn the label correlations which can be exploited to augment the incomplete label matrix and obtain a new supplementary label matrix. Then, we learn a label-specific data representation for each class label, which is composed of label-specific features for the corresponding class label, and build the multi-label classifier simultaneously. A comparative study with the state-of-the-art approaches manifests the effectiveness of our proposed method.
机译:现有的多标签学习方法主要假设针对所有训练示例都观察到所有类别标签,并且在区分所有标签时利用由所有特征组成的相同数据表示。但是,在多标签学习中,每个类标签可能由其自身的某些特定功能确定,并且在许多应用中只能为每个示例获取部分标签集。本文提出了一种学习缺少标签的多标签分类的标签特定功能的新方法,即LSML。首先,我们学习标签相关性,可以利用这些相关性来扩充不完整的标签矩阵并获得新的补充标签矩阵。然后,我们为每个类标签学习特定于标签的数据表示,该数据表示由对应类标签的特定于标签的功能组成,并同时构建多标签分类器。与最先进方法的比较研究证明了我们提出的方法的有效性。

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