4.7 Article

Manifold Coordinates with Physical Meaning

期刊

出版社

MICROTOME PUBL

关键词

dimension reduction; manifold learning; functional regression; gradient; group; lasso

资金

  1. NSF [DMS PD 08-1269]
  2. U.S. Department of Energy, Solar Energy Technology Office award [DE-EE0008563, NSF IGERT 1258485]
  3. Moore -Sloan Foundation
  4. UW eScience Institute
  5. Simons Fellowship

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This paper studies the problem of recovering the meaning of the new low-dimensional representation in an automatic and principled fashion. A method is proposed to explain the embedding coordinates and its effectiveness is demonstrated through experiments.
Manifold embedding algorithms map high-dimensional data down to coordinates in a much lower-dimensional space. One of the aims of dimension reduction is to find intrinsic coordinates that describe the data manifold. The coordinates returned by the embedding algorithm are abstract, and finding their physical or domain-related meaning is not formalized and often left to domain experts. This paper studies the problem of recovering the meaning of the new low-dimensional representation in an automatic, principled fashion. We propose a method to explain embedding coordinates of a manifold as non-linear compositions of functions from a user-defined dictionary. We show that this problem can be set up as a sparse linear Group Lasso recovery problem, find sufficient recovery conditions, and demonstrate its effectiveness on data.

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