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Algebra / Mathematics / Statistics / Algebraic graph theory / Multivariate statistics / Geostatistics / Machine learning / Spectral clustering / Image segmentation / Nonlinear dimensionality reduction / Cluster analysis / Diffusion map
Date: 2012-04-22 01:00:23
Algebra
Mathematics
Statistics
Algebraic graph theory
Multivariate statistics
Geostatistics
Machine learning
Spectral clustering
Image segmentation
Nonlinear dimensionality reduction
Cluster analysis
Diffusion map

Affinity Learning via Self-diffusion for Image Segmentation and Clustering Bo Wang1 and Zhuowen Tu2,3 Department of Computer Science, University of Toronto 2 Microsoft Research Asia 3

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