Unsupervised feature selection via self-paced learning and low-redundant regularization

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摘要

Much more attention has been paid to unsupervised feature selection nowadays due to the emergence of massive unlabeled data. The distribution of samples and the latent effect of training a learning method using samples in more effective order need to be considered so as to improve the robustness of the method. Self-paced learning is an effective method considering the training order of samples. In this study, an unsupervised feature selection is proposed by integrating the framework of self-paced learning and subspace learning. Moreover, the local manifold structure is preserved and the redundancy of features is constrained by two regularization terms. -norm is applied to the projection matrix, which aims to retain discriminative features and further alleviate the effect of noise in the data. Then, an iterative method is presented to solve the optimization problem. The convergence of the method is proved theoretically and experimentally. The proposed method is compared with other state of the art algorithms on nine real-world datasets. The experimental results show that the proposed method can improve the performance of clustering methods and outperform other compared algorithms.

论文关键词:Unsupervised feature selection,Self-paced learning,Subspace learning,Redundancy reduction,Local manifold structure

论文评审过程:Received 11 July 2021, Revised 14 December 2021, Accepted 3 January 2022, Available online 10 January 2022, Version of Record 2 February 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.108150