A finite steps algorithm for solving convex feasibility problems

被引:0
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作者
M. Ait Rami
U. Helmke
J. B. Moore
机构
[1] University of Würzburg,Department of Mathematics
[2] Australian National University,Department of Information Engineering, Research School of Information Sciences and Engineering
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关键词
Convex optimization; Linear matrix inequality; Eigenvalue problem; Alternating projections;
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摘要
This paper develops a new variant of the classical alternating projection method for solving convex feasibility problems where the constraints are given by the intersection of two convex cones in a Hilbert space. An extension to the feasibility problem for the intersection of two convex sets is presented as well. It is shown that one can solve such problems in a finite number of steps and an explicit upper bound for the required number of steps is obtained. As an application, we propose a new finite steps algorithm for linear programming with linear matrix inequality constraints. This solution is computed by solving a sequence of a matrix eigenvalue decompositions. Moreover, the proposed procedure takes advantage of the structure of the problem. In particular, it is well adapted for problems with several small size constraints.
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页码:143 / 160
页数:17
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