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Feature-aware Label Space Dimension Reduction for Multi-label Classification

机译:用于多标签分类的特征感知标签空间尺寸缩减

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Label space dimension reduction (LSDR) is an efficient and effective paradigm for multi-label classification with many classes. Existing approaches to LSDR, such as compressive sensing and principal label space transformation, exploit only the label part of the dataset, but not the feature part. In this paper, we propose a novel approach to LSDR that considers both the label and the feature parts. The approach, called conditional principal label space transformation, is based on minimizing an upper bound of the popular Hamming loss. The minimization step of the approach can be carried out efficiently by a simple use of singular value decomposition. In addition, the approach can be extended to a kernelized version that allows the use of sophisticated feature combinations to assist LSDR. The experimental results verify mat the proposed approach is more effective than existing ones to LSDR across many real-world datasets.
机译:标签空间降维(LSDR)是一种有效的范式,适用于具有多个类的多标签分类。 LSDR的现有方法(例如压缩感测和主要标签空间转换)仅利用数据集的标签部分,而不利用特征部分。在本文中,我们提出了一种同时考虑标签和特征部分的LSDR新方法。该方法称为有条件的主标签空间变换,它基于最小化流行的汉明损失的上限。该方法的最小化步骤可以通过简单地使用奇异值分解来有效地执行。另外,该方法可以扩展到内核版本,该版本允许使用复杂的功能组合来辅助LSDR。实验结果证明,对于许多实际数据集而言,所提出的方法比现有方法对LSDR更为有效。

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