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Sparse robust subspace learning via boolean weight.

Authors :
Wang, Sisi
Nie, Feiping
Wang, Zheng
Wang, Rong
Li, Xuelong
Source :
Information Fusion. Aug2023, Vol. 96, p224-236. 13p.
Publication Year :
2023

Abstract

Unsupervised feature selection is a hot topic in the field of machine learning, which is more convenient and important because it does not require labeled data. Currently, unsupervised feature selection algorithms based on ℓ 2 , 1 -norm are very mature and have certain robustness to outliers, but they still have some problems that cannot be ignored. For example, the sparsity of ℓ 2 , 1 -norm is not ideal, they cannot achieve row sparsity but only element sparsity. Second, fine-tuning meaningless regularization parameters increases cost and makes it easy to fall into suboptimal solutions. To release the above problems, we propose an unsupervised feature selection algorithm via Sparse Robust Subspace Learning (SRSL), which combines reconstruction term and variance term so that the model simultaneously preserves reconstruction information and enhances separability. What is more, using the ℓ 2 , 0 -norm constraint on transformation matrix makes our model have a row-sparse property. In addition, we design the boolean weight so that the model not only eliminates outliers fundamentally to enhance robustness, but also achieves the effect of anomaly detection. To solve this NP-hard problem, we carefully design an optimization algorithm, which has strict convergence guarantees and obtains a closed-form solution. Experimental results on several real-world datasets demonstrate that our algorithm outperforms other comparison algorithms in both clustering and anomaly detection applications. [Display omitted] • A robust feature selection method based on reconstruction and variance is proposed. • Designing boolean weight to fundamentally eliminate outliers. • Designing an algorithm to solve ℓ 2 , 0 -norm constrained problem of feature selection. • Our algorithm has significant advantages in practical applications. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15662535
Volume :
96
Database :
Academic Search Index
Journal :
Information Fusion
Publication Type :
Academic Journal
Accession number :
163261070
Full Text :
https://doi.org/10.1016/j.inffus.2023.03.020