Laplacian Eigenmaps for Dimensionality Reduction and Data Representation
Top Cited Papers
- 1 June 2003
- journal article
- research article
- Published by MIT Press in Neural Computation
- Vol. 15 (6), 1373-1396
- https://doi.org/10.1162/089976603321780317
Abstract
One of the central problems in machine learning and pattern recognition is to develop appropriate representations for complex data. We consider the problem of constructing a representation for data lying on a low-dimensional manifold embedded in a high-dimensional space. Drawing on the correspondence between the graph Laplacian, the Laplace Beltrami operator on the manifold, and the connections to the heat equation, we propose a geometrically motivated algorithm for representing the high-dimensional data. The algorithm provides a computationally efficient approach to nonlinear dimensionality reduction that has locality-preserving properties and a natural connection to clustering. Some potential applications and illustrative examples are discussed.This publication has 9 references indexed in Scilit:
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