Cutting Planes for Low-Rank-Like Concave Minimization Problems

Published Online:https://doi.org/10.1287/opre.1040.0151

Concavity cuts play an important role in several algorithms for concave minimization, such as pure cutting plane algorithms, conical algorithms, and branch-and-bound algorithms. For concave quadratic minimization problems Konno et al. (1998) have demonstrated that the lower the rank of the problem, i.e., the smaller the number of nonlinear variables, the deeper the concavity cuts usually turn out to be. In this paper we examine the case where the number of nonlinear variables of a concave minimization problem is large, but most of the objective value of a good solution is determined by a small number of variables only. We will discuss ways to exploit such a situation to derive deep cutting planes. To this end we apply concepts usually applied for efficiently solving low-rank concave minimization problems.

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