2023
DOI: 10.36227/techrxiv.20976760
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Fast Sparse PCA via Positive Semidefinite Projection for Unsupervised Feature Selection

Abstract: <p>In the field of unsupervised feature selection, sparse principal component analysis (SPCA) methods have attracted more and more attention recently. Compared to spectral-based methods, SPCA methods don’t rely on the construction of similarity matrix and show better feature selection ability on real-world data. The original SPCA formulates a nonconvex optimization problem. And existing convex SPCA methods reformulate SPCA as a convex model by regarding reconstruction matrix as optimization variable. How… Show more

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