Unsupervised feature selection via graph matrix learning and the low-dimensional space learning for classification

Volume: 87, Pages: 103283 - 103283
Published: Jan 1, 2020
Abstract
Unsupervised feature selection is a powerful tool to select a subset of features for effective representation of high-dimensional data. In this paper, we proposes a novel unsupervised feature selection method via the graph matrix learning and the low-dimensional space learning to obtain their individually optimized result. Furthermore, the global and local correlation of features have been taken into consideration through the low-rank constraint...
Paper Details
Title
Unsupervised feature selection via graph matrix learning and the low-dimensional space learning for classification
Published Date
Jan 1, 2020
Volume
87
Pages
103283 - 103283
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