Literature DB >> 32571935

A tractable latent variable model for nonlinear dimensionality reduction.

Lawrence K Saul1.   

Abstract

We propose a latent variable model to discover faithful low-dimensional representations of high-dimensional data. The model computes a low-dimensional embedding that aims to preserve neighborhood relationships encoded by a sparse graph. The model both leverages and extends current leading approaches to this problem. Like t-distributed Stochastic Neighborhood Embedding, the model can produce two- and three-dimensional embeddings for visualization, but it can also learn higher-dimensional embeddings for other uses. Like LargeVis and Uniform Manifold Approximation and Projection, the model produces embeddings by balancing two goals-pulling nearby examples closer together and pushing distant examples further apart. Unlike these approaches, however, the latent variables in our model provide additional structure that can be exploited for learning. We derive an Expectation-Maximization procedure with closed-form updates that monotonically improve the model's likelihood: In this procedure, embeddings are iteratively adapted by solving sparse, diagonally dominant systems of linear equations that arise from a discrete graph Laplacian. For large problems, we also develop an approximate coarse-graining procedure that avoids the need for negative sampling of nonadjacent nodes in the graph. We demonstrate the model's effectiveness on datasets of images and text.

Entities:  

Keywords:  nonlinear dimensionality reduction; unsupervised learning

Year:  2020        PMID: 32571935      PMCID: PMC7354940          DOI: 10.1073/pnas.1916012117

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  6 in total

1.  Nonlinear dimensionality reduction by locally linear embedding.

Authors:  S T Roweis; L K Saul
Journal:  Science       Date:  2000-12-22       Impact factor: 47.728

2.  A global geometric framework for nonlinear dimensionality reduction.

Authors:  J B Tenenbaum; V de Silva; J C Langford
Journal:  Science       Date:  2000-12-22       Impact factor: 47.728

3.  Hessian eigenmaps: locally linear embedding techniques for high-dimensional data.

Authors:  David L Donoho; Carrie Grimes
Journal:  Proc Natl Acad Sci U S A       Date:  2003-04-30       Impact factor: 11.205

4.  Geometric diffusions as a tool for harmonic analysis and structure definition of data: diffusion maps.

Authors:  R R Coifman; S Lafon; A B Lee; M Maggioni; B Nadler; F Warner; S W Zucker
Journal:  Proc Natl Acad Sci U S A       Date:  2005-05-17       Impact factor: 12.779

5.  Visual analysis of mass cytometry data by hierarchical stochastic neighbour embedding reveals rare cell types.

Authors:  Vincent van Unen; Thomas Höllt; Nicola Pezzotti; Na Li; Marcel J T Reinders; Elmar Eisemann; Frits Koning; Anna Vilanova; Boudewijn P F Lelieveldt
Journal:  Nat Commun       Date:  2017-11-23       Impact factor: 14.919

6.  Fast interpolation-based t-SNE for improved visualization of single-cell RNA-seq data.

Authors:  George C Linderman; Manas Rachh; Jeremy G Hoskins; Stefan Steinerberger; Yuval Kluger
Journal:  Nat Methods       Date:  2019-02-11       Impact factor: 28.547

  6 in total

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