Nonnegative Laplacian embedding guided subspace learning for unsupervised feature selection

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摘要

Unsupervised feature selection plays an important role in machine learning and data mining, which is very challenging because of unavailable class labels. We propose an unsupervised feature selection framework by combining the discriminative information of class labels with the subspace learning in this paper. In the proposed framework, the nonnegative Laplacian embedding is first utilized to produce pseudo labels, so as to improve the classification accuracy. Then, an optimal feature subset is selected by the subspace learning guiding by the discriminative information of class labels, on the premise of maintaining the local structure of data. We develop an iterative strategy for updating similarity matrix and pseudo labels, which can bring about more accurate pseudo labels, and then we provide the convergence of the proposed strategy. Finally, experimental results on six real-world datasets prove the superiority of the proposed approach over seven state-of-the-art ones.

论文关键词:Unsupervised feature selection,Nonnegative Laplacian embedding,Subspace learning,Class labels

论文评审过程:Received 4 September 2017, Revised 21 February 2019, Accepted 24 April 2019, Available online 25 April 2019, Version of Record 6 May 2019.

论文官网地址:https://doi.org/10.1016/j.patcog.2019.04.020