Unsupervised Feature Selection With Constrained ℓ,-Norm and Optimized Graph

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Abstract

In this article, we propose a novel feature selection approach, named unsupervised feature selection with constrained ℓ 2,0-norm (row-sparsity constrained) and optimized graph (RSOGFS), which unifies feature selection and similarity matrix construction into a general framework instead of independently performing the two-stage process; thus, the similarity matrix preserving the local manifold structure of data can be determined adaptively. Unlike those sparse learning-based feature selection methods that can only solve the relaxation or approximation problems by introducing sparsity regularization term into the objective function, the proposed method directly tackles the original ℓ 2,0-norm constrained problem to achieve group feature selection. Two optimization strategies are provided to solve the original sparse constrained problem. The convergence and approximation guarantees for the new algorithms are rigorously proved, and the computational complexity and parameter determination are theoretically analyzed. Experimental results on real-world data sets show that the proposed method for solving a nonconvex problem is superior to the state of the arts for solving the relaxed or approximate convex problems.

Original languageEnglish
Pages (from-to)1702-1713
Number of pages12
JournalIEEE Transactions on Neural Networks and Learning Systems
Volume33
Issue number4
DOIs
StatePublished - 1 Apr 2022

Keywords

  • Group feature selection
  • Optimized graph
  • Unsupervised learning
  • ℓ2,0-norm

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