A polynomial projective algorithm for convex feasibility problems with positive-definite constraints
A polynomial projective algorithm for convex feasibility problems with positive-definite constraints
We study a class of projective transformations of spectraplexes associated with self-dual cones and, on this basis, propose a polynomial-time algorithm for convex feasibility problems with positive definite constraints. At each iteration of the algorithm, either a feasible solution is found or a suitable valid inequality inducing a projective transformation allowing to bring the solution set closer to the center of an associated spectraplex. The closeness to the center is measured in terms of a potential function. The running time of our algorithm makes the existing complexity bounds more precise for the case when the number of equations linking the positive definite variable matrices is not less than the sum of the ranks of the respective positive-semidefinite cones.
Sergei Chubanov
数学
Sergei Chubanov.A polynomial projective algorithm for convex feasibility problems with positive-definite constraints[EB/OL].(2025-06-18)[2025-07-02].https://arxiv.org/abs/2506.15484.点此复制
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