Abstract

Motivated by the perspective use in decomposition-based generic Mixed Integer Programming (MIP) solvers, we consider the problem of scoring Dantzig-Wolfe decomposition patterns. In particular, assuming to receive in input a MIP instance, we tackle the issue of estimating the tightness of the dual bound yielded by a particular decomposition of that MIP instance, and the computing time required to obtain such a dual bound, looking only at static features of the corresponding data matrices. We propose decomposition ranking methods. We also sketch and evaluate an architecture for an automatic data-driven detector of good decompositions.

Machine LearningMixed Integer ProgrammingDecomposition

BibTeX

@article{basso2018computational,
  title   = {Computational evaluation of ranking models in an automatic decomposition framework},
  author  = {Basso, Saverio and Ceselli, Alberto},
  journal = {Electronic Notes in Discrete Mathematics},
  volume  = {69},
  year    = {2018},
  pages   = {245-252},
  doi     = {10.1016/j.endm.2018.07.032}
}