An Outer Approximation Algorithm for Solving General Convex Programs

Published Online:https://doi.org/10.1287/opre.31.1.101

A new outer approximation algorithm is proposed for solving general convex programs. A remarkable advantage of the algorithm over existing outer approximation methods is that the approximation of the constraint set is not cumulative. That is, the algorithm solves at each iteration a quadratic program whose constraints depend only on the current estimate of an optimal solution. Convergence of the algorithm is proved and possible applications are discussed.

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