A joint convex penalty for inverse covariance matrix estimation
The paper proposes a joint convex penalty for estimating the Gaussian inverse covariance matrix. A proximal gradient method is developed to solve the resulting optimization problem with more than one penalty constraints. The analysis shows that imposing a single constraint is not enough and the estimator can be improved by a trade-off between two convex penalties. The developed framework can be extended to solve wide arrays of constrained convex optimization problems. A simulation study is carried out to compare the performance of the proposed method to graphical lasso and the SPICE estimate of the inverse covariance matrix.
Year of publication: |
2014
|
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Authors: | Maurya, Ashwini |
Published in: |
Computational Statistics & Data Analysis. - Elsevier, ISSN 0167-9473. - Vol. 75.2014, C, p. 15-27
|
Publisher: |
Elsevier |
Subject: | Proximal gradient | Joint penalty | Convex optimization | Sparsity |
Saved in:
Online Resource
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