4.6 Article

Convex Non-Negative Matrix Factorization With Adaptive Graph for Unsupervised Feature Selection

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 52, 期 6, 页码 5522-5534

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2020.3034462

关键词

Manifolds; Computational modeling; Task analysis; Encoding; Analytical models; Optimization; Feature extraction; Adaptive graph constraint; manifold structure; non-negative matrix factorization (NMF); unsupervised feature selection (UFS)

资金

  1. Natural Science Foundation of Shaanxi Province [2020JQ-279]
  2. Doctoral Start-Up Foundation of Northwest AF University [Z1090219095, Z109021803]

向作者/读者索取更多资源

This article proposes a novel unsupervised feature selection method based on convex non-negative matrix factorization with an adaptive graph constraint. It can explore the correlation between data while preserving the local structure. By integrating pseudo label matrix learning into the self-expression module and optimizing them simultaneously, this method effectively selects the most representative feature subset.
Unsupervised feature selection (UFS) aims to remove the redundant information and select the most representative feature subset from the original data, so it occupies a core position for high-dimensional data preprocessing. Many proposed approaches use self-expression to explore the correlation between the data samples or use pseudolabel matrix learning to learn the mapping between the data and labels. Furthermore, the existing methods have tried to add constraints to either of these two modules to reduce the redundancy, but no prior literature embeds them into a joint model to select the most representative features by the computed top ranking scores. To address the aforementioned issue, this article presents a novel UFS method via a convex non-negative matrix factorization with an adaptive graph constraint (CNAFS). Through convex matrix factorization with adaptive graph constraint, it can dig up the correlation between the data and keep the local manifold structure of the data. To our knowledge, it is the first work that integrates pseudo label matrix learning into the self-expression module and optimizes them simultaneously for the UFS solution. Besides, two different manifold regularizations are constructed for the pseudolabel matrix and the encoding matrix to keep the local geometrical structure. Eventually, extensive experiments on the benchmark datasets are conducted to prove the effectiveness of our method. The source code is available at: https://github.com/misteru/CNAFS.

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