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Statistical models / Graphical models / Statistical theory / Maximum likelihood / Markov random field / Logistic regression / Fisher information / Likelihood function / Graphical models for protein structure / Statistics / Estimation theory / Bayesian statistics
Date: 2011-04-08 11:45:11
Statistical models
Graphical models
Statistical theory
Maximum likelihood
Markov random field
Logistic regression
Fisher information
Likelihood function
Graphical models for protein structure
Statistics
Estimation theory
Bayesian statistics

On Learning Discrete Graphical Models using Group-Sparse Regularization Ali Jalali ECE, UT Austin [removed]

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