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      Graph Laplacian for Semi-Supervised Learning

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          Abstract

          Semi-supervised learning is highly useful in common scenarios where labeled data is scarce but unlabeled data is abundant. The graph (or nonlocal) Laplacian is a fundamental smoothing operator for solving various learning tasks. For unsupervised clustering, a spectral embedding is often used, based on graph-Laplacian eigenvectors. For semi-supervised problems, the common approach is to solve a constrained optimization problem, regularized by a Dirichlet energy, based on the graph-Laplacian. However, as supervision decreases, Dirichlet optimization becomes suboptimal. We therefore would like to obtain a smooth transition between unsupervised clustering and low-supervised graph-based classification. In this paper, we propose a new type of graph-Laplacian which is adapted for Semi-Supervised Learning (SSL) problems. It is based on both density and contrastive measures and allows the encoding of the labeled data directly in the operator. Thus, we can perform successfully semi-supervised learning using spectral clustering. The benefits of our approach are illustrated for several SSL problems.

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          Author and article information

          Journal
          12 January 2023
          Article
          2301.04956
          e4149d19-d7a3-4504-a78e-45b5dd8873a4

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          12 pages, 6 figures
          cs.CV cs.LG eess.SP

          Computer vision & Pattern recognition,Artificial intelligence,Electrical engineering

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