A Semismooth Newton-Type Method for the Nearest Doubly Stochastic Matrix Problem
Abstract
We study a semismooth Newton-type method for the nearest doubly stochastic matrix problem where both differentiability and nonsingularity of the Jacobian can fail. The optimality conditions for this problem are formulated as a system of strongly semismooth functions. We show that the so-called local error bound condition does not hold for this system. Thus the guaranteed convergence rate of Newton-type methods is at most superlinear. By exploiting the problem structure, we construct a modified two step semismooth Newton method that guarantees a nonsingular Jacobian matrix at each iteration, and that converges to the nearest doubly stochastic matrix quadratically. To the best of our knowledge, this is the first Newton-type method which converges -quadratically in the absence of the local error bound condition.
Cite
@article{arxiv.2107.09631,
title = {A Semismooth Newton-Type Method for the Nearest Doubly Stochastic Matrix Problem},
author = {Hao Hu and Haesol Im and Xinxin Li and Henry Wolkowicz},
journal= {arXiv preprint arXiv:2107.09631},
year = {2021}
}