Roland Griesse

1paper

1 Paper

OCMar 4, 2008
A Semismooth Newton Method for Tikhonov Functionals with Sparsity Constraints

Roland Griesse, Dirk A. Lorenz

Minimization problems in $\ell^2$ for Tikhonov functionals with sparsity constraints are considered. Sparsity of the solution is ensured by a weighted $\ell^1$ penalty term. The necessary and sufficient condition for optimality is shown to be slantly differentiable (Newton differentiable), hence a semismooth Newton method is applicable. Local superlinear convergence of this method is proved. Numerical examples are provided which show that our method compares favorably with existing approaches.