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Hypergraph expressing low-rank feature selection algorithm

机译:表达超图的低秩特征选择算法

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摘要

Dimensionality reduction has been attracted extensive attention in machine learning. It usually includes two types: feature selection and subspace learning. Previously, many researchers have demonstrated that the dimensionality reduction is meaningful for real applications. Unfortunately, a large mass of these works utilize the feature selection and subspace learning independently. This paper explores a novel supervised feature selection algorithm by considering the subspace learning. Specifically, this paper employs an ℓ ~(2,1)−norm and an ℓ ~(2, p )−norm regularizers, respectively, to conduct sample denoising and feature selection via exploring the correlation structure of data. Then this paper uses two constraints ( i . e . hypergraph and low-rank) to consider the local structure and the global structure among the data, respectively. Finally, this paper uses the optimizing framework to iteratively optimize each parameter while fixing the other parameter until the algorithm converges. A lot of experiments show that our new supervised feature selection method can get great results on the eighteen public data sets.
机译:降维已在机器学习中引起广泛关注。它通常包括两种类型:特征选择和子空间学习。以前,许多研究人员已经证明降维对于实际应用是有意义的。不幸的是,这些作品中有大量都是独立地使用特征选择和子空间学习的。通过考虑子空间学习,探索了一种新颖的监督特征选择算法。具体而言,本文分别采用ℓ〜(2,1)-范数和ℓ〜(2,p)-范数正则化器,通过探索数据的相关结构进行样本去噪和特征选择。然后,本文使用两个约束(即超图和低秩)分别考虑数据之间的局部结构和全局结构。最后,本文使用优化框架对每个参数进行迭代优化,同时固定另一个参数,直到算法收敛为止。许多实验表明,我们的新的监督特征选择方法可以在18个公共数据集上获得出色的结果。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2018年第22期|29551-29572|共22页
  • 作者单位

    College of Computer Science, Information Technology Guangxi Normal University;

    College of Computer Science, Information Technology Guangxi Normal University;

    College of Computer Science, Information Technology Guangxi Normal University;

    College of Computer Science, Information Technology Guangxi Normal University;

    College of Public Health and Management, Guangxi University of Chinese Medicine;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hypergraph; LowRank; Feature selection;

    机译:超图;低排名;特征选择;

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