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The A-truncated K-moment problem (1210.6930v2)

Published 25 Oct 2012 in math.FA

Abstract: Let A be a finite subset of Nn, and K be a compact semialgebraic set in Rn. An A-tms is a vector y indexed by elements in A. The A-truncated K-moment problem (A-TKMP) studies whether a given A-tms y admits a K-measure or not. This paper proposes a numerical algorithm for solving A-TKMPs. It is based on finding a flat extension of y by solving a hierarchy of semidefinite relaxations {(SDR)_k} for a moment optimization problem, whose objective R is generated in a certain randomized way. If y admits no K-measures and R[x]_A is K-full, then (SDR)_k is infeasible for all K big enough, which gives a certificate for the nonexistence of representing measures. If y admits a K-measure, then for almost all generated R, we prove that: i) we can asymptotically get a flat extension of y by solving the hierarchy {(SDR)_k}; ii) under a general condition that is almost sufficient and necessary, we can get a flat extension of y by solving (SDR)_k for some k; this occurred in all our numerical experiments; iii) the obtained flat extensions admit a r-atomic K-measure with r <= |A|. The decomposition problems for completely positive matrices and sums of even powers of real linear forms, and the standard truncated K-moment problems, are special cases of A-TKMPs, and hence can be solved numerically by this algorithm.

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