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Statistics / Machine learning / Nonparametric statistics / Estimation theory / Computational statistics / Kernel density estimation / Pattern recognition / Artificial neural network / Mixture model / Density estimation / Inverse problem / Maximum a posteriori estimation
Date: 2013-03-07 08:16:36
Statistics
Machine learning
Nonparametric statistics
Estimation theory
Computational statistics
Kernel density estimation
Pattern recognition
Artificial neural network
Mixture model
Density estimation
Inverse problem
Maximum a posteriori estimation

sm_reg_surface_noisy_60_b.eps

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