Abstract
AbstractWe consider both facial reduction, FR, and symmetry reduction, SR, techniques for semidefinite programming, SDP. We show that the two together fit surprisingly well in an alternating direction method of multipliers, ADMM, approach. In fact, this approach allows for simply adding on nonnegativity constraints, and solving the doubly nonnegative, DNN , relaxation of many classes of hard combinatorial problems. We also show that the singularity degree remains the same after SR, and that the DNN relaxations considered here have singularity degree one, that is reduced to zero after FR. The combination of FR and SR leads to a significant improvement in both numerical stability and running time for both the ADMM and interior point approaches. We test our method on various DNN relaxations of hard combinatorial problems including quadratic assignment problems with sizes of more than $$n=500$$
n
=
500
. This translates to a semidefinite constraint of order 250, 000 and $$625\times 10^8$$
625
×
10
8
nonnegative constrained variables, before applying the reduction techniques.
Funder
natural sciences and engineering research council of canada
Publisher
Springer Science and Business Media LLC
Subject
General Mathematics,Software
Cited by
2 articles.
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1. Handling Symmetries in Mixed-Integer Semidefinite Programs;Integration of Constraint Programming, Artificial Intelligence, and Operations Research;2023
2. A note on the SDP relaxation of the minimum cut problem;Journal of Global Optimization;2022-09-29