A mixed-integer branching approach for very small formulations of disjunctive constraints
Joey Huchette, Juan Pablo Vielma

TL;DR
This paper introduces a new mixed-integer branching framework for disjunctive constraints that produces small, strong formulations suitable for efficient optimization, especially in power systems and robotics.
Contribution
It provides an explicit linear inequality description for mixed-integer formulations that are both strong and minimal in size, generalizing existing formulations for disjunctive constraints.
Findings
Formulations with only two integer variables and linear constraints.
Strong relaxations comparable to the best existing formulations.
Efficient formulations for power systems and robotics constraints.
Abstract
An important problem in optimization is the construction of mixed-integer programming (MIP) formulations of disjunctive constraints that are both strong and small. Motivated by lower bounds on the number of integer variables that are required by traditional MIP formulations, we present a more general mixed-integer branching formulation framework. Our approach maintains favorable algorithmic properties of traditional MIP formulations: in particular, amenability to branch-and-bound and branch-and-cut algorithms. Our main technical result gives an explicit linear inequality description for both traditional MIP and mixed-integer branching formulations for a wide range of disjunctive constraints. The formulations obtained from this description have linear programming relaxations that are as strong as possible and generalize some of the most computationally effective formulations for…
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Taxonomy
TopicsFormal Methods in Verification · Advanced Optimization Algorithms Research · Advanced Control Systems Optimization
