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JGO
2016

Constrained trace-optimization of polynomials in freely noncommuting variables

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Constrained trace-optimization of polynomials in freely noncommuting variables
The study of matrix inequalities in a dimension-free setting is in the realm of free real algebraic geometry (RAG). In this paper we investigate constrained trace and eigenvalue optimization of noncommutative polynomials. We present Lasserre’s relaxation scheme for trace optimization based on semidefinite programming (SDP) and demonstrate its convergence properties. Finite convergence of this relaxation scheme is governed by flatness, i.e., a rankpreserving property for associated dual SDPs. If flatness is observed, then optimizers can be extracted using the Gelfand-Naimark-Segal construction and the Artin-Wedderburn theory verifying exactness of the relaxation. To enforce flatness we employ a noncommutative version of the randomization technique championed by Nie. The implementation of these procedures in our computer algebra system NCSOStools is presented and several examples are given to illustrate our results.
Igor Klep, Janez Povh
Added 06 Apr 2016
Updated 06 Apr 2016
Type Journal
Year 2016
Where JGO
Authors Igor Klep, Janez Povh
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