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A Comparative Study on Single and Dual Space Reduction in Multi-label Classification

机译:多标签分类单空间减少的比较研究

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Multi-label classification has been applied to several applications since it can assign multiple class labels to an object. However, its effectiveness might be sacrificed due to high-dimensionality problem in both feature space and label space. To address these issues, several dimensionality reduction methods have been proposed to transform the high-dimensional spaces to low-dimensional spaces. This paper aims to provide a comprehensive review on ten-dimensionality reduction methods that applied to multi-label classification. These methods can be categorized into two main approaches: single space reduction and dual space reduction. While the former approach aims to reduce the complexity in either feature space or label space, the latter approach transforms both feature and label spaces into two subspaces. Moreover, a comparative study on single space reduction and dual space reduction approaches with five real-world datasets are also reported. The experimental results indicated that dual space reduction approach tends to give better performance comparing to the single reduction approach. Furthermore, experiments have been conducted to investigate the effect of dataset characteristics on classification performance.
机译:多标签分类已应用于多个应用程序,因为它可以将多个类标签分配给对象。然而,由于特征空间和标签空间中的高度问题,它可能会牺牲其有效性。为了解决这些问题,已经提出了几种维度减少方法以将高维空间转换为低维空间。本文旨在对适用于多标签分类的十维减少方法提供全面的审查。这些方法可以分为两种主要方法:单个空间减少和减少双空间。虽然前一种方法旨在降低特征空间或标签空间中的复杂性,但后一种方法将特征和标签空间转换为两个子空间。此外,还报道了对单空域减少和具有五个现实数据集的双空间减少方法的比较研究。实验结果表明,与单一减少方法相比,双空间减少方法倾向于提供更好的性能。此外,已经进行了实验以研究数据集特性对分类性能的影响。

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