A Nonlinear Bregman Primal-Dual Framework for Optimizing Nonconvex Infimal Convolutions
Abstract
This work is concerned with the optimization of nonconvex, nonsmooth composite optimization problems, whose objective is a composition of a nonlinear mapping and a nonsmooth nonconvex function, that can be written as an infimal convolution (inf-conv). To tackle this problem class we propose to reformulate the problem exploiting its inf-conv structure and derive a block coordinate descent scheme on a Bregman augmented Lagrangian, that can be implemented asynchronously. We prove convergence of our scheme to stationary points of the original model for a specific choice of the penalty parameter. Our framework includes various existing algorithms as special cases, such as DC-programming, -means clustering and ADMM with nonlinear operator, when a specific objective function and inf-conv decomposition (inf-deconvolution) is chosen. In illustrative experiments, we provide evidence, that our algorithm behaves favorably in terms of low objective value and robustness towards initialization, when compared to DC-programming or the -means algorithm.
Cite
@article{arxiv.1803.02487,
title = {A Nonlinear Bregman Primal-Dual Framework for Optimizing Nonconvex Infimal Convolutions},
author = {Emanuel Laude and Daniel Cremers},
journal= {arXiv preprint arXiv:1803.02487},
year = {2018}
}
Comments
We withdraw the pre-print as it contains some technical flaws that we hope to resolve in the future