Unsupervised Feature Selection With Extended OLSDA via Embedding Nonnegative Manifold Structure

IEEE Transactions on Neural Networks and Learning Systems(2022)

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摘要
As to unsupervised learning, most discriminative information is encoded in the cluster labels. To obtain the pseudo labels, unsupervised feature selection methods usually utilize spectral clustering to generate them. Nonetheless, two related disadvantages exist accordingly: 1) the performance of feature selection highly depends on the constructed Laplacian matrix and 2) the pseudo labels are obtai...
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关键词
Feature extraction,Manifolds,Matrices,Laplace equations,Linear programming,Task analysis,Sparse matrices
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