Multi-Manifold Semi-Supervised Learning

نویسندگان

  • Andrew B. Goldberg
  • Xiaojin Zhu
  • Aarti Singh
  • Zhiting Xu
  • Robert D. Nowak
چکیده

We study semi-supervised learning when the data consists of multiple intersecting manifolds. We give a finite sample analysis to quantify the potential gain of using unlabeled data in this multi-manifold setting. We then propose a semi-supervised learning algorithm that separates different manifolds into decision sets, and performs supervised learning within each set. Our algorithm involves a novel application of Hellinger distance and size-constrained spectral clustering. Experiments demonstrate the benefit of our multimanifold semi-supervised learning approach.

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تاریخ انتشار 2009