Simone Rebegoldi

2papers

2 Papers

NAApr 8, 2017
On the convergence of a linesearch based proximal-gradient method for nonconvex optimization

Silvia Bonettini, Ignace Loris, Federica Porta et al.

We consider a variable metric linesearch based proximal gradient method for the minimization of the sum of a smooth, possibly nonconvex function plus a convex, possibly nonsmooth term. We prove convergence of this iterative algorithm to a critical point if the objective function satisfies the Kurdyka-Lojasiewicz property at each point of its domain, under the assumption that a limit point exists. The proposed method is applied to a wide collection of image processing problems and our numerical tests show that our algorithm results to be flexible, robust and competitive when compared to recently proposed approaches able to address the optimization problems arising in the considered applications.

NAFeb 24, 2015
A cyclic block coordinate descent method with generalized gradient projections

Silvia Bonettini, Marco Prato, Simone Rebegoldi

The aim of this paper is to present the convergence analysis of a very general class of gradient projection methods for smooth, constrained, possibly nonconvex, optimization. The key features of these methods are the Armijo linesearch along a suitable descent direction and the non Euclidean metric employed to compute the gradient projection. We develop a very general framework from the point of view of block--coordinate descent methods, which are useful when the constraints are separable.