English

Two-Manifold Problems

Machine Learning 2011-12-30 v1

Abstract

Recently, there has been much interest in spectral approaches to learning manifolds---so-called kernel eigenmap methods. These methods have had some successes, but their applicability is limited because they are not robust to noise. To address this limitation, we look at two-manifold problems, in which we simultaneously reconstruct two related manifolds, each representing a different view of the same data. By solving these interconnected learning problems together and allowing information to flow between them, two-manifold algorithms are able to succeed where a non-integrated approach would fail: each view allows us to suppress noise in the other, reducing bias in the same way that an instrumental variable allows us to remove bias in a {linear} dimensionality reduction problem. We propose a class of algorithms for two-manifold problems, based on spectral decomposition of cross-covariance operators in Hilbert space. Finally, we discuss situations where two-manifold problems are useful, and demonstrate that solving a two-manifold problem can aid in learning a nonlinear dynamical system from limited data.

Keywords

Cite

@article{arxiv.1112.6399,
  title  = {Two-Manifold Problems},
  author = {Byron Boots and Geoffrey J. Gordon},
  journal= {arXiv preprint arXiv:1112.6399},
  year   = {2011}
}
R2 v1 2026-06-21T19:58:13.496Z