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arxiv: 2010.06956 · v1 · pith:EOXIKR5Vnew · submitted 2020-10-14 · 🧮 math.OC

Exploiting term sparsity in Noncommutative Polynomial Optimization

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keywords optimizationnctssosnoncommutativeproblemssparsityarxivhierarchyterm
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We provide a new hierarchy of semidefinite programming relaxations, called NCTSSOS, to solve large-scale sparse noncommutative polynomial optimization problems. This hierarchy features the exploitation of term sparsity hidden in the input data for eigenvalue and trace optimization problems. NCTSSOS complements the recent work that exploits correlative sparsity for noncommutative optimization problems by Klep, Magron and Povh in arXiv:1909.00569, and is the noncommutative analogue of the TSSOS framework by Wang, Magron and Lasserre in arXiv:1912.08899. We also propose an extension exploiting simultaneously correlative and term sparsity, as done previously in the commutative case arXiv:2005.02828. Under certain conditions, we prove that the optimums of the NCTSSOS hierarchy converge to the optimum of the corresponding dense SDP relaxation. We illustrate the efficiency and scalability of NCTSSOS by solving eigenvalue/trace optimization problems from the literature as well as randomly generated examples involving up to several thousands of variables.

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  1. A Moment-QSOS Hierarchy for a Class of Quaternion Polynomial Optimization Problems

    math.OC 2026-05 unverdicted novelty 7.0

    A new Moment-QSOS hierarchy delivers SDP relaxations for quaternion polynomial optimization that incorporate correlative sparsity and a strengthened monomial basis for tighter bounds.