English

Sparse multi-term disjunctive cuts for the epigraph of a function of binary variables

Optimization and Control 2022-07-12 v2

Abstract

We propose a new method for separating valid inequalities for the epigraph of a function of binary variables. The proposed inequalities are disjunctive cuts defined by disjunctive terms obtained by enumerating a subset II of the binary variables. We show that by restricting the support of the cut to the same set of variables II, a cut can be obtained by solving a linear program with 2I2^{|I|} constraints. While this limits the size of the set II used to define the multi-term disjunction, the procedure enables generation of multi-term disjunctive cuts using far more terms than existing approaches. We present two approaches for choosing the subset of variables. Experience on three MILP problems with block diagonal structure using I|I| up to size 10 indicates the sparse cuts can often close nearly as much gap as the multi-term disjunctive cuts without this restriction and in a fraction of the time. We also find that including these cuts within a cut-and-branch solution method for these MILP problems leads to significant reductions in solution time or ending optimality gap for instances that were not solved within the time limit. Finally, we describe how the proposed approach can be adapted to optimally "tilt" a given valid inequality by modifying the coefficients of a sparse subset of the variables.

Keywords

Cite

@article{arxiv.2111.07855,
  title  = {Sparse multi-term disjunctive cuts for the epigraph of a function of binary variables},
  author = {Rui Chen and James Luedtke},
  journal= {arXiv preprint arXiv:2111.07855},
  year   = {2022}
}
R2 v1 2026-06-24T07:39:03.183Z