Weighted Manifold Multi-Plane Twin Least Squares Classification


In this paper, we propose weighted Manifold Multi-plane Twin Least Squares classifier which concerns the local geometry of the samples by a manifold regularization term and measures the importance degree of each sample using K neighboring relation. In addition to keeping the respective advantages of TWSVM, LSTSVM and some graph learning algorithms, our methods improve the separation of the points sharing different classes. Also experimental evidence suggests that our methods are effective in performing classification task.

  • Abstract
  • Key Words
  • 1 Introduction
  • 2 Weighted Manifold Twin Least Squares (LMLSTSVM)
  • 3. Experimental Results
  • 4. Conclusions and Further Work
  • Acknowledgement
  • References
Topics: Manifolds

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