Abstract

A convex semidefinite optimization problem with a conic constraint is considered. We formulate a Wolfe-type dual problem for the problem for its -approximate solutions, and then we prove -weak duality theorem and -strong duality theorem which hold between the problem and its Wolfe type dual problem. Moreover, we give an example illustrating the duality theorems.

Highlights

  • Convex semidefinite optimization problem is to optimize an objective convex function over a linear matrix inequality

  • Jeyakumar and Glover 11 gave -optimality conditions for convex optimization problems, which hold without any constraint qualification

  • Kim and Lee 12 proved sequential -saddle point theorems and -duality theorems for convex semidefinite optimization problems which have not conic constraints

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Summary

Gue Myung Lee and Jae Hyoung Lee

A convex semidefinite optimization problem with a conic constraint is considered. We formulate a Wolfe-type dual problem for the problem for its -approximate solutions, and we prove -weak duality theorem and -strong duality theorem which hold between the problem and its Wolfe type dual problem. We give an example illustrating the duality theorems

Introduction
Journal of Inequalities and Applications
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