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Mathematical optimization / Regression analysis / Image processing / Nonlinear dimensionality reduction / Supervised learning / Neil Gershenfeld / Segmentation / Cluster analysis / Spectral clustering / Statistics / Machine learning / Multivariate statistics
Date: 2011-12-13 18:32:07
Mathematical optimization
Regression analysis
Image processing
Nonlinear dimensionality reduction
Supervised learning
Neil Gershenfeld
Segmentation
Cluster analysis
Spectral clustering
Statistics
Machine learning
Multivariate statistics

Convex Modeling with Priors by Benjamin Recht B.S., University of ChicagoM.S., Massachusetts Institute of Technology (2002)

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