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Variational Bayesian methods / Normal distribution / Maximum likelihood / Gaussian process / Interpretation / Principal component analysis / Statistics / Bayesian statistics / Estimation theory
Date: 2013-09-06 21:39:41
Variational Bayesian methods
Normal distribution
Maximum likelihood
Gaussian process
Interpretation
Principal component analysis
Statistics
Bayesian statistics
Estimation theory

Hierarchical Latent Dictionaries for Models of Brain Activation Alona Fyshe Machine Learning Carnegie Mellon University

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