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Data analysis / Matrices / Multivariate normal distribution / Normal distribution / Fisher information / Maximum likelihood / Covariance matrix / Covariance / Matrix / Statistics / Estimation theory / Covariance and correlation
Date: 2011-05-03 19:18:22
Data analysis
Matrices
Multivariate normal distribution
Normal distribution
Fisher information
Maximum likelihood
Covariance matrix
Covariance
Matrix
Statistics
Estimation theory
Covariance and correlation

High-dimensional covariance estimation by minimizing 1-penalized log-determinant divergence

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