This paper focuses on solving two-stage stochastic mixed integer programs (SMIPs) with general mixed integer decision variables in both stages. We develop a decomposition algorithm in which the first stage approximation is solved using a branch-and-bound tree with nodes inheriting Benders' cuts that are valid for their ancestor nodes. In addition, we develop two closely related convexification schemes which use multi-term disjunctive cuts to obtain approximations of the second stagemixed-integer programs. We prove that the proposed methods are finitely convergent. One of the main advantages of our decomposition scheme is that we use a Benders-based branch-and-cut approach in which linear programming approximations are strengthened sequentia...
We develop scalable algorithms for two-stage stochastic program optimizations. We propose performanc...
Many real-life optimization problems belong to the class of two-stage stochastic mixed-integer progr...
This paper presents a decomposition approach for linear multistage stochasticprograms, that is based...
This paper focuses on solving two-stage stochastic mixed integer programs (SMIPs) with general mixed...
This paper presents a branch-and-cut method for two-stage stochastic mixed-integer programming (SMIP...
This paper introduces disjunctive decomposition for two-stage mixed 0-1 stochastic integer programs ...
Two-stage stochastic mixed-integer programming (SMIP) problems with recourse are generally difficult...
Benders decomposition is one of the most applied methods to solve two-stage stochastic problems (TSS...
We describe a generalization of Benders’ method for solving two-stage stochastic linear optimization...
This paper introduces a new cutting plane method for two-stage stochastic mixed-integer programming ...
Two-stage stochastic mixed-integer programming (SMIP) problems with re-course are generally difficul...
We propose a new class of convex approximations for two-stage mixed-integer recourse models, the so-...
We consider two-stage stochastic programming problems with integer recourse. The L-shaped method of ...
This paper introduces a new cutting plane method for two-stage stochastic mixed-integer programming ...
We introduce the two-stage stochastic minimum s − t cut problem. Based on a classical linear 0-1 pro...
We develop scalable algorithms for two-stage stochastic program optimizations. We propose performanc...
Many real-life optimization problems belong to the class of two-stage stochastic mixed-integer progr...
This paper presents a decomposition approach for linear multistage stochasticprograms, that is based...
This paper focuses on solving two-stage stochastic mixed integer programs (SMIPs) with general mixed...
This paper presents a branch-and-cut method for two-stage stochastic mixed-integer programming (SMIP...
This paper introduces disjunctive decomposition for two-stage mixed 0-1 stochastic integer programs ...
Two-stage stochastic mixed-integer programming (SMIP) problems with recourse are generally difficult...
Benders decomposition is one of the most applied methods to solve two-stage stochastic problems (TSS...
We describe a generalization of Benders’ method for solving two-stage stochastic linear optimization...
This paper introduces a new cutting plane method for two-stage stochastic mixed-integer programming ...
Two-stage stochastic mixed-integer programming (SMIP) problems with re-course are generally difficul...
We propose a new class of convex approximations for two-stage mixed-integer recourse models, the so-...
We consider two-stage stochastic programming problems with integer recourse. The L-shaped method of ...
This paper introduces a new cutting plane method for two-stage stochastic mixed-integer programming ...
We introduce the two-stage stochastic minimum s − t cut problem. Based on a classical linear 0-1 pro...
We develop scalable algorithms for two-stage stochastic program optimizations. We propose performanc...
Many real-life optimization problems belong to the class of two-stage stochastic mixed-integer progr...
This paper presents a decomposition approach for linear multistage stochasticprograms, that is based...