TANG Kewei, ZHANG Jun, ZHANG Changsheng, WANG Lijun, ZHAI Yun, JIANG Wei. Unsupervised, Supervised and Semi-supervised Dimensionality Reduction by Low-Rank Regression Analysis[J]. Chinese Journal of Electronics, 2021, 30(4): 603-610. DOI: 10.1049/cje.2021.05.002
Citation: TANG Kewei, ZHANG Jun, ZHANG Changsheng, WANG Lijun, ZHAI Yun, JIANG Wei. Unsupervised, Supervised and Semi-supervised Dimensionality Reduction by Low-Rank Regression Analysis[J]. Chinese Journal of Electronics, 2021, 30(4): 603-610. DOI: 10.1049/cje.2021.05.002

Unsupervised, Supervised and Semi-supervised Dimensionality Reduction by Low-Rank Regression Analysis

  • Techniques for dimensionality reduction have attracted much attention in computer vision and pattern recognition. However, for the supervised or unsupervised case, the methods combining regression analysis and spectral graph analysis do not consider the global structure of the subspace; For semi-supervised case, how to use the unlabeled samples more effectively is still an open problem. In this paper, we propose the methods by Low-rank regression analysis (LRRA) to deal with these problems. For supervised or unsupervised dimensionality reduction, combining spectral graph analysis and LRRA can make a global constraint on the subspace. For semi-supervised dimensionality reduction, the proposed method incorporating LRRA can exploit the unlabeled samples more effectively. The experimental results show the effectiveness of our methods.
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