A sub-additive DC approach to the complementarity problem

L Abdallah, M Haddou, T Migot - Computational Optimization and …, 2019 - Springer
L Abdallah, M Haddou, T Migot
Computational Optimization and Applications, 2019Springer
In this article, we study a merit function based on sub-additive functions for solving the non-
linear complementarity problem (NCP). This leads to consider an optimization problem that
is equivalent to the NCP. In the case of a concave NCP this optimization problem is a
Difference of Convex (DC) program and we can therefore use DC Algorithm to locally solve
it. We prove that in the case of a concave monotone NCP, it is sufficient to compute a
stationary point of the optimization problem to obtain a solution of the complementarity …
Abstract
In this article, we study a merit function based on sub-additive functions for solving the non-linear complementarity problem (NCP). This leads to consider an optimization problem that is equivalent to the NCP. In the case of a concave NCP this optimization problem is a Difference of Convex (DC) program and we can therefore use DC Algorithm to locally solve it. We prove that in the case of a concave monotone NCP, it is sufficient to compute a stationary point of the optimization problem to obtain a solution of the complementarity problem. In the case of a general NCP, assuming that a DC decomposition of the complementarity problem is known, we propose a penalization technique to reformulate the optimization problem as a DC program and prove that local minima of this penalized problem are also local minima of the merit problem. Numerical results on linear complementarity problems, absolute value equations and non-linear complementarity problems show that our method is promising.
Springer
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