4.6 Article

A PROXIMAL POINT ALGORITHM FOR LOG-DETERMINANT OPTIMIZATION WITH GROUP LASSO REGULARIZATION

Journal

SIAM JOURNAL ON OPTIMIZATION
Volume 23, Issue 2, Pages 857-893

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/120864192

Keywords

covariance selection; log-determinant optimization; group Lasso regularization; proximal point algorithm; augmented Lagrangian; alternating direction method; Newton's method; Gaussian graphical model

Funding

  1. Natural Science Foundation of China [NSFC-11001123]
  2. Program for New Century Excellent Talents in University [NCET-12-0252]
  3. Fundamental Research Funds for the Central Universities
  4. Academic Research Fund [R-146-000-149-112]

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We consider the covariance selection problem where variables are clustered into groups and the inverse covariance matrix is expected to have a blockwise sparse structure. This problem is realized via penalizing the maximum likelihood estimation of the inverse covariance matrix by group Lasso regularization. We propose to solve the resulting log-determinant optimization problem with the classical proximal point algorithm (PPA). At each iteration, as it is difficult to update the primal variables directly, we first solve the dual subproblem by an inexact semismooth Newton-CG method and then update the primal variables by explicit formulas based on the computed dual variables. We also propose to accelerate the PPA by an inexact generalized Newton's method when the iterate is close to the solution. Theoretically, we prove that at the optimal solution, the nonsingularity of the generalized Hessian matrices of the dual subproblem is equivalent to the constraint nondegeneracy condition for the primal problem. Global and local convergence results are also presented for the proposed PPA. Moreover, based on the augmented Lagrangian function of the dual problem we derive an alternating direction method (ADM), which is easily implementable and is demonstrated to be efficient for random problems. Numerical results, including comparisons with the ADM on both synthetic and real data, are presented to demonstrate that the proposed Newton-CG based PPA is stable and efficient and, in particular, outperforms the ADM when high accuracy is required.

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