Adaptive Manifold Learning

Wang, Jing, Zhang, Zhenyue, Zha, Hongyuan

Neural Information Processing Systems 

Recently, there have been several advances in the machine learning and pattern recognition communities for developing manifold learning algorithms toconstruct nonlinear low-dimensional manifolds from sample data points embedded in high-dimensional spaces. In this paper, we develop algorithmsthat address two key issues in manifold learning: 1) the adaptive selection of the neighborhood sizes; and 2) better fitting the local geometric structure to account for the variations in the curvature of the manifold and its interplay with the sampling density of the data set. We also illustrate the effectiveness of our methods on some synthetic data sets.

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