4.6 Article

A coordinate gradient descent method for nonsmooth separable minimization

Journal

MATHEMATICAL PROGRAMMING
Volume 117, Issue 1-2, Pages 387-423

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s10107-007-0170-0

Keywords

error bound; global convergence; linear convergence rate; nonsmooth optimization; coordinate descent

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We consider the problem of minimizing the sum of a smooth function and a separable convex function. This problem includes as special cases bound-constrained optimization and smooth optimization with l(1)-regularization. We propose a (block) coordinate gradient descent method for solving this class of nonsmooth separable problems. We establish global convergence and, under a local Lipschitzian error bound assumption, linear convergence for this method. The local Lipschitzian error bound holds under assumptions analogous to those for constrained smooth optimization, e.g., the convex function is polyhedral and the smooth function is (nonconvex) quadratic or is the composition of a strongly convex function with a linear mapping. We report numerical experience with solving the l(1)-regularization of unconstrained optimization problems from More et al. in ACM Trans. Math. Softw. 7, 17-41, 1981 and from the CUTEr set (Gould and Orban in ACM Trans. Math. Softw. 29, 373-394, 2003). Comparison with L-BFGS-B and MINOS, applied to a reformulation of the l(1)-regularized problem as a bound-constrained optimization problem, is also reported.

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