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Growing Locally Linear Embedding for Manifold Learning
2007
Journal of Pattern Recognition Research
Locally linear embedding is an effective nonlinear dimensionality reduction method for exploring the intrinsic characteristics of high dimensional data. This paper proposes a new manifold learning method, which is based on locally linear embedding and growing neural gas and is termed growing locally linear embedding (GLLE). GLLE overcomes the major limitations of the original locally linear embedding, which are intrinsic dimensionality estimation, selection of the number of nearest neighbors,
doi:10.13176/11.22
fatcat:6enihiff6vertj2jk42akqkguy