Semi-Supervised Laplacian Learning on Stiefel Manifolds
Holtz, Chester, Chen, Pengwen, Cloninger, Alexander, Cheng, Chung-Kuan, Mishne, Gal
–arXiv.org Artificial Intelligence
Motivated by the need to address the degeneracy of canonical Laplace learning algorithms in low label rates, we propose to reformulate graph-based semi-supervised learning as a nonconvex generalization of a \emph{Trust-Region Subproblem} (TRS). This reformulation is motivated by the well-posedness of Laplacian eigenvectors in the limit of infinite unlabeled data. To solve this problem, we first show that a first-order condition implies the solution of a manifold alignment problem and that solutions to the classical \emph{Orthogonal Procrustes} problem can be used to efficiently find good classifiers that are amenable to further refinement. Next, we address the criticality of selecting supervised samples at low-label rates. We characterize informative samples with a novel measure of centrality derived from the principal eigenvectors of a certain submatrix of the graph Laplacian. We demonstrate that our framework achieves lower classification error compared to recent state-of-the-art and classical semi-supervised learning methods at extremely low, medium, and high label rates. Our code is available on github\footnote{anonymized for submission}.
arXiv.org Artificial Intelligence
Jul-31-2023
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- North America > United States
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- New York > New York County
- New York City (0.14)
- North America > United States
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- Research Report (0.82)
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